GGally/0000755000176200001440000000000015052263362011435 5ustar liggesusersGGally/tests/0000755000176200001440000000000015023101257012567 5ustar liggesusersGGally/tests/testthat/0000755000176200001440000000000015052263362014437 5ustar liggesusersGGally/tests/testthat/test-ggsurv.R0000644000176200001440000001055215027521001017044 0ustar liggesuserssuppressMessages(require(survival)) suppressMessages(require(scales)) lung <- survival::lung kidney <- survival::kidney sf.lung <- survival::survfit(Surv(time, status) ~ 1, data = lung) sf.kid <- survival::survfit(Surv(time, status) ~ disease, data = kidney) test_that("single", { a <- ggsurv(sf.lung) expect_equal(mapping_string(a$mapping$x), "time") expect_equal(mapping_string(a$mapping$y), "surv") labs <- get_labs(a) expect_true(is.null(labs$group)) expect_true(is.null(labs$colour)) expect_true(is.null(labs$linetype)) }) test_that("multiple", { a <- ggsurv(sf.kid) expect_equal(mapping_string(a$mapping$x), "time") expect_equal(mapping_string(a$mapping$y), "surv") labs <- get_labs(a) expect_true(!is.null(labs$group)) expect_true(!is.null(labs$colour)) expect_true(!is.null(labs$linetype)) }) test_that("adjust plot", { a <- ggsurv(sf.kid, plot.cens = FALSE) expect_equal(length(a$layers), 1) a <- ggsurv(sf.kid, plot.cens = TRUE) expect_equal(length(a$layers), 2) }) test_that("stops", { noCensor <- subset(lung, status == 1) lungNoCensor <- survival::survfit(Surv(time, status) ~ 1, data = noCensor) # check that the surv.col and lty.est are of the correct length expect_error(ggsurv(lungNoCensor, surv.col = c("black", "red"))) expect_error(ggsurv(lungNoCensor, lty.est = 1:2)) # must have censor to plot expect_error(ggsurv(lungNoCensor, plot.cens = TRUE)) noCensor <- subset(kidney, status == 1) kidneyNoCensor <- survival::survfit( Surv(time, status) ~ disease, data = noCensor ) # check that the surv.col and lty.est are of the correct length. should be 4 expect_error(ggsurv(kidneyNoCensor, surv.col = c("black", "red", "blue"))) expect_error(ggsurv(kidneyNoCensor, lty.est = 1:3)) # must have censor to plot expect_error(ggsurv(kidneyNoCensor, plot.cens = TRUE)) # must have censor to plot expect_silent( ggsurv(sf.kid, CI = TRUE, surv.col = c("black", "red", "blue", "green")) ) expect_silent( ggsurv(sf.kid, CI = TRUE, lty.est = 1:4) ) ggsurv(sf.kid, CI = TRUE, surv.col = "red") }) test_that("back.white", { sf.lung <- survival::survfit(Surv(time, status) ~ 1, data = lung) sf.kid <- survival::survfit(Surv(time, status) ~ disease, data = kidney) a <- ggsurv(sf.lung, back.white = FALSE) expect_true(length(a$theme) == 0) a <- ggsurv(sf.lung, back.white = TRUE) expect_true(length(a$theme) != 0) a <- ggsurv(sf.kid, back.white = FALSE) expect_true(length(a$theme) == 0) a <- ggsurv(sf.kid, back.white = TRUE) expect_true(length(a$theme) != 0) }) test_that("surv.col", { ggsurv(sf.lung, surv.col = "red") ggsurv(sf.kid, surv.col = "red") ggsurv(sf.kid, surv.col = c("black", "red", "blue", "green")) ggsurv(sf.kid, lty.est = 1) ggsurv(sf.kid, lty.est = 1:4) expect_true("idk how to test it happened" != "fail") }) test_that("CI", { a <- ggsurv(sf.lung, CI = FALSE) b <- ggsurv(sf.lung, CI = TRUE) expect_equal(length(b$layers) - length(a$layers), 2) a <- ggsurv(sf.kid, CI = FALSE) b <- ggsurv(sf.kid, CI = TRUE) expect_equal(length(b$layers) - length(a$layers), 2) }) test_that("multiple colors", { p <- ggsurv(sf.kid, plot.cens = TRUE) ggally_expect_doppelganger("plot-cens-true", p) expect_warning( { ggsurv(sf.kid, plot.cens = TRUE, cens.col = c("red", "blue")) }, "Color scales for censored points" ) p <- ggsurv(sf.kid, plot.cens = TRUE, cens.col = "blue") ggally_expect_doppelganger("plot-cens-true-blue", p) custom_color <- c("green", "blue", "purple", "orange") p <- ggsurv(sf.kid, plot.cens = TRUE, cens.col = custom_color) ggally_expect_doppelganger("plot-cens-true-custom", p) expect_warning( { ggsurv( sf.kid, plot.cens = TRUE, cens.col = custom_color, cens.shape = c(1, 2) ) }, "The length of the censored shapes" ) p <- ggsurv( sf.kid, plot.cens = TRUE, cens.col = custom_color, cens.shape = c(1, 2, 3, 4) ) ggally_expect_doppelganger("plot-cens-true-custom-shape", p) }) test_that("cens.size", { a <- ggsurv(sf.lung) b <- ggsurv(sf.lung, cens.size = 5) expect_true(a$layers[[4]]$aes_params$size == 2) expect_true(b$layers[[4]]$aes_params$size != 2) a <- ggsurv(sf.kid) b <- ggsurv(sf.lung, cens.size = 5) expect_true(a$layers[[2]]$aes_params$size == 2) expect_true(b$layers[[4]]$aes_params$size != 2) }) GGally/tests/testthat/test-vig_ggally.R0000644000176200001440000000052014562447013017662 0ustar liggesuserstest_that("all vignetts are accounted for", { testthat::skip_on_cran() # make sure vig dir exists vig_dir <- file.path("..", "..", "vignettes") testthat::skip_if_not(dir.exists(vig_dir)) vigs <- dir(vig_dir, pattern = "\\.Rmd$") vigs <- sub(".Rmd", "", vigs, fixed = TRUE) expect_setequal(vignettes_for_ggally, vigs) }) GGally/tests/testthat/test-wrap.R0000644000176200001440000000213515047655266016525 0ustar liggesuserstest_that("errors", { fn <- ggally_points # named params expect_error(wrap(fn, NA), "all parameters") expect_error(wrap(fn, y = TRUE, 5), "all parameters") # named params to wrapp expect_error(wrapp(fn, list(5)), "`params` must") expect_error(wrapp(fn, table(1:10, 1:10)), "`params` must") expect_error(wrapp(fn, list(A = 4, 5)), "`params` must") # if the character fn doesn't exist expect_error(wrap("does not exist", A = 5), "Function provided") expect_error(wrapp("does not exist", list(A = 5)), "Function provided") }) test_that("wrap", { (regularPlot <- ggally_points( iris, ggplot2::aes(Sepal.Length, Sepal.Width), size = 5, color = "red" )) # Wrap ggally_points to have parameter values size = 5 and color = 'red' w_ggally_points <- wrap(ggally_points, size = 5, color = "red") (wrappedPlot <- w_ggally_points( iris, ggplot2::aes(Sepal.Length, Sepal.Width) )) # Double check the aes parameters are the same for the geom_point layer expect_true(identical( regularPlot$layers[[1]]$aes_params, wrappedPlot$layers[[1]]$aes_params )) }) GGally/tests/testthat/test-gg-plots.R0000644000176200001440000002105215027521001017260 0ustar liggesusers# This file takes too long testthat::skip_on_cran() data(tips) data(nasa) nas <- subset(nasa, x <= 2 & y == 1) test_that("denstrip", { expect_message( suppressWarnings(print(ggally_denstrip( tips, mapping = aes(!!as.name("sex"), !!as.name("tip")) ))), "`stat_bin()` using `bins = 30`", fixed = TRUE ) expect_message( suppressWarnings(print(ggally_denstrip( tips, mapping = aes(!!as.name("tip"), !!as.name("sex")) ))), "`stat_bin()` using `bins = 30`", fixed = TRUE ) }) test_that("density", { p <- ggally_density( tips, mapping = ggplot2::aes( x = !!as.name("total_bill"), y = !!as.name("tip"), fill = after_stat(level) ) ) + ggplot2::scale_fill_gradient(breaks = c(0.05, 0.1, 0.15, 0.2)) expect_equal(get_labs(p)$fill, "level") }) test_that("cor", { ti <- tips class(ti) <- c("NOTFOUND", "data.frame") p <- ggally_cor(ti, ggplot2::aes(x = total_bill, y = tip, color = day)) expect_equal( mapping_string(get("mapping", envir = p$layers[[2]])$colour), "labelp" ) p <- ggally_cor( ti, ggplot2::aes(x = total_bill, y = tip, color = I("blue")) ) expect_equal( mapping_string(get("mapping", envir = p$layers[[1]])$colour), "I(\"blue\")" ) expect_err <- function(..., msg = NULL) { expect_error( ggally_cor( ti, ggplot2::aes(x = total_bill, y = tip), ... ), msg ) } ggally_expect_doppelganger( "cor-green", ggally_cor(ti, ggplot2::aes(x = total_bill, y = tip, color = I("green"))) ) ti3 <- ti2 <- ti ti2[2, "total_bill"] <- NA ti3[2, "total_bill"] <- NA ti3[3, "tip"] <- NA ti3[4, "total_bill"] <- NA ti3[4, "tip"] <- NA expect_warn <- function(data, msg) { expect_warning( ggally_cor(data, ggplot2::aes(x = total_bill, y = tip)), msg ) } expect_warn(ti2, "Removing 1 row that") expect_warn(ti3, "Removed 3 rows containing") expect_error( ggally_cor( ti, ggplot2::aes(x = total_bill, y = tip, color = size) ), "must be categorical" ) expect_silent( ggally_cor( ti, ggplot2::aes(x = total_bill, y = tip, color = as.factor(size)) ) ) }) test_that("diagAxis", { p <- ggally_diagAxis(iris, ggplot2::aes(x = Petal.Width)) pDat1 <- get("data", envir = p$layers[[2]]) attr(pDat1, "out.attrs") <- NULL testDt1 <- data.frame( xPos = c( 0.076, 0.076, 0.076, 0.076, 0.076, 0.076, 0.500, 1.000, 1.500, 2.000, 2.500 ), yPos = c( 0.500, 1.000, 1.500, 2.000, 2.500, 0.076, 0.076, 0.076, 0.076, 0.076, 0.076 ), lab = as.character(c(0.5, 1, 1.5, 2, 2.5, 0, 0.5, 1, 1.5, 2, 2.5)), hjust = c(0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.5, 0.5, 0.5, 0.5, 0.5), vjust = c(0.5, 0.5, 0.5, 0.5, 0.5, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0), stringsAsFactors = FALSE ) rownames(testDt1) <- 2:12 expect_equal(pDat1, testDt1) p <- ggally_diagAxis(iris, ggplot2::aes(x = Species)) pDat2 <- get("data", envir = p$layers[[2]]) attr(pDat2, "out.attrs") <- NULL testDt2 <- data.frame( x = c(0.125, 0.500, 0.875), y = c(0.875, 0.500, 0.125), lab = c("setosa", "versicolor", "virginica") ) expect_equal(pDat2, testDt2) expect_error( { ggally_diagAxis(iris, mapping = ggplot2::aes(y = Sepal.Length)) }, "mapping\\$x is null." ) }) test_that("dates", { class(nas) <- c("NOTFOUND", "data.frame") p <- ggally_cor(nas, ggplot2::aes(x = date, y = ozone)) expect_equal( get("aes_params", envir = p$layers[[1]])$label, "Corr:\n0.278***" ) p <- ggally_barDiag(nas, ggplot2::aes(x = date), bins = 10) expect_equal(mapping_string(p$mapping$x), "date") expect_equal(as.character(get_labs(p)$y), "count") }) test_that("cor stars are aligned", { p <- ggally_cor( iris, ggplot2::aes(x = Sepal.Length, y = Petal.Width, color = as.factor(Species)) ) expect_equal(get("aes_params", envir = p$layers[[1]])$label, "Corr: 0.818***") # expect_equal(get("aes_params", envir = p$layers[[1]])$family, "mono") labels <- eval_data_col(p$layers[[2]]$data, p$layers[[2]]$mapping$label) expect_equal( as.character(labels), c(" setosa: 0.278. ", "versicolor: 0.546***", " virginica: 0.281* ") ) }) test_that("ggally_statistic handles factors", { simple_chisq <- function(x, y) { scales::number(chisq.test(x, y)$p.value, accuracy = .001) } expect_silent({ p <- ggally_statistic( tips, aes(x = sex, y = day), text_fn = simple_chisq, title = "Chi^2" ) }) }) test_that("rescale", { p <- ggally_densityDiag( tips, mapping = ggplot2::aes(x = day), rescale = FALSE ) expect_true(get_labs(p)$y == "density") ggally_expect_doppelganger("rescale-false", p) p <- ggally_densityDiag(tips, mapping = ggplot2::aes(x = day), rescale = TRUE) expect_true(!identical(get_labs(p)$y, "density")) ggally_expect_doppelganger("rescale-true", p) p <- ggally_barDiag( tips, mapping = ggplot2::aes(x = tip), binwidth = 0.25, rescale = FALSE ) expect_true(get_labs(p)$y == "count") ggally_expect_doppelganger("rescale-false-binwidth", p) p <- ggally_barDiag( tips, mapping = ggplot2::aes(x = tip), binwidth = 0.25, rescale = TRUE ) expect_true(!identical(get_labs(p)$y, "count")) ggally_expect_doppelganger("rescale-true-binwidth", p) }) test_that("shrink", { p <- ggally_smooth_loess( iris, mapping = ggplot2::aes(Sepal.Width, Petal.Length) ) expect_true(!is.null(p$coordinates$limits$y)) ggally_expect_doppelganger("shrink-true", p) p <- ggally_smooth_loess( iris, mapping = ggplot2::aes(Sepal.Width, Petal.Length), shrink = FALSE ) expect_true(is.null(p$coordinates$limits$y)) ggally_expect_doppelganger("shrink-false", p) }) test_that("smooth_se", { p <- ggally_smooth_loess( iris, mapping = ggplot2::aes(Sepal.Width, Petal.Length), se = TRUE ) expect_equal(p$layers[[2]]$stat_params$se, TRUE) ggally_expect_doppelganger("smooth-se-true", p) p <- ggally_smooth_loess( iris, mapping = ggplot2::aes(Sepal.Width, Petal.Length), se = FALSE ) expect_equal(p$layers[[2]]$stat_params$se, FALSE) ggally_expect_doppelganger("smooth-se-false", p) }) test_that("ggally_count", { p <- ggally_count( as.data.frame(Titanic), ggplot2::aes(x = Class, y = Survived, weight = Freq) ) ggally_expect_doppelganger("titanic-count", p) p <- ggally_count( as.data.frame(Titanic), ggplot2::aes(x = Class, y = Survived, weight = Freq), fill = "red" ) ggally_expect_doppelganger("titanic-count-red", p) p <- ggally_count( as.data.frame(Titanic), ggplot2::aes(x = Class, y = Survived, weight = Freq, fill = Sex) ) ggally_expect_doppelganger("titanic-count-sex", p) p <- ggally_count( as.data.frame(Titanic), ggplot2::aes(x = Class, y = Survived, weight = Freq, fill = Class) ) ggally_expect_doppelganger("titanic-count-class", p) p <- ggally_count( as.data.frame(Titanic), ggplot2::aes( x = Survived, y = interaction(Sex, Age), weight = Freq, fill = Class ) ) ggally_expect_doppelganger("titanic-count-interaction", p) # check that y character vectors are rendering p <- ggally_count( as.data.frame(Titanic), ggplot2::aes(x = Class, y = toupper(Survived), weight = Freq, fill = Class) ) ggally_expect_doppelganger("titanic-count-toupper", p) # check countDiag p <- ggally_countDiag( as.data.frame(Titanic), ggplot2::aes(x = Survived, weight = Freq, fill = Class) ) ggally_expect_doppelganger("titanic-count-diag", p) # change size of tiles p <- ggally_count( as.data.frame(Titanic), ggplot2::aes(x = Class, y = Survived, weight = Freq, fill = Class), x.width = .5 ) ggally_expect_doppelganger("titanic-count-diag-class", p) # no warnings expected if na.rm = TRUE p <- ggally_count( as.data.frame(Titanic), ggplot2::aes( x = interaction(Class, Age), y = Survived, weight = Freq, fill = Class ), na.rm = TRUE ) ggally_expect_doppelganger("titanic-count-diag-interaction", p) }) test_that("deprecated ggally_cor variables are deprecated", { lifecycle::expect_deprecated( ggally_cor(tips, mapping = aes(total_bill, tip), use = "something") ) lifecycle::expect_deprecated( ggally_cor(tips, mapping = aes(total_bill, tip), alignPercent = 0.5) ) lifecycle::expect_deprecated( ggally_cor(tips, mapping = aes(total_bill, tip), displayGrid = FALSE) ) }) GGally/tests/testthat/test-ggally_cross.R0000644000176200001440000000625515027521001020224 0ustar liggesuserstest_that("example", { # ggally_cross data(tips) # Custom fill ggally_expect_doppelganger( "tips-fill-red", ggally_cross(tips, mapping = aes(x = smoker, y = sex), fill = "red") ) # Custom shape ggally_expect_doppelganger( "tips-shape", ggally_cross(tips, mapping = aes(x = smoker, y = sex), shape = 21) ) # Fill squares according to standardized residuals d <- as.data.frame(Titanic) ggally_expect_doppelganger( "titanic-fill-steps2", ggally_cross( d, mapping = aes( x = Class, y = Survived, weight = Freq, fill = after_stat(std.resid) ) ) + scale_fill_steps2(breaks = c(-3, -2, 2, 3), show.limits = TRUE) ) # Add labels ggally_expect_doppelganger( "tips-label", ggally_cross( tips, mapping = aes( x = smoker, y = sex, colour = smoker, label = scales::percent(after_stat(prop)) ) ) ) # Customize labels' appearance and same size for all squares ggally_expect_doppelganger( "tips-label-custom", ggally_cross( tips, mapping = aes( x = smoker, y = sex, size = NULL, # do not map size to a variable label = scales::percent(after_stat(prop)) ), size = 40, # fix value for points size fill = "darkblue", geom_text_args = list(colour = "white", fontface = "bold", size = 6) ) ) ggally_expect_doppelganger( "tips-sex", ggally_cross(tips, mapping = aes(x = smoker, y = sex)) ) ggally_expect_doppelganger( "tips-time", ggally_cross(tips, mapping = aes(x = day, y = time)) ) ggally_expect_doppelganger( "tips-time-color", ggally_table(tips, mapping = aes(x = smoker, y = sex, colour = smoker)) ) # colour is kept only if equal to x or y ggally_expect_doppelganger( "tips-color-equal", ggally_table(tips, mapping = aes(x = smoker, y = sex, colour = day)) ) # diagonal version ggally_expect_doppelganger( "tips-diagonal", ggally_tableDiag(tips, mapping = aes(x = smoker)) ) # custom label size and color ggally_expect_doppelganger( "tips-red-size16", ggally_table( tips, mapping = aes(x = smoker, y = sex), size = 16, color = "red" ) ) # display column proportions ggally_expect_doppelganger( "table-label", ggally_table( tips, mapping = aes( x = day, y = sex, label = scales::percent(after_stat(col.prop)) ) ) ) # draw table cells ggally_expect_doppelganger( "table-color-fill", ggally_table( tips, mapping = aes(x = smoker, y = sex), geom_tile_args = list(colour = "black", fill = "white") ) ) # Use standardized residuals to fill table cells ggally_expect_doppelganger( "table-fill-steps2", ggally_table( as.data.frame(Titanic), mapping = aes( x = Class, y = Survived, weight = Freq, fill = after_stat(std.resid), label = scales::percent(after_stat(col.prop), accuracy = .1) ), geom_tile_args = list(colour = "black") ) + scale_fill_steps2(breaks = c(-3, -2, 2, 3), show.limits = TRUE) ) }) GGally/tests/testthat/test-ggmatrix.R0000644000176200001440000001060615047655266017400 0ustar liggesusersdata(tips) test_that("stops", { expect_error( ggmatrix(plots = matrix(), nrow = 2, ncol = 3), "`plots` must be a `list()`", fixed = TRUE ) expect_error( ggmatrix(plots = list(), nrow = "2", ncol = 3), "`nrow` must be a numeric value" ) expect_error( ggmatrix(plots = list(), nrow = 2, ncol = "3"), "`ncol` must be a numeric value" ) expect_error( ggmatrix(plots = list(), nrow = c(2, 3), ncol = 3), "`nrow` must be a single numeric value" ) expect_error( ggmatrix(plots = list(), nrow = 2, ncol = c(2, 3)), "`ncol` must be a single numeric value" ) }) test_that("expression labels", { chars <- c("col1", "col2") exprs <- c("alpha[0]", "gamma[x + y ^ z]") p <- ggpairs(tips, 1:2, columnLabels = exprs, labeller = "label_parsed") ggally_expect_doppelganger("expression-labels", p) expect_error( print(ggpairs(tips, 1:2, columnLabels = expression(alpha, beta))), "xAxisLabels" ) }) test_that("byrow", { plotList <- list() for (i in 1:6) { p <- ggally_text(paste("Plot #", i, sep = "")) p$ggally_check_val <- i plotList[[i]] <- p } a <- ggmatrix( plotList, 2, 3, c("A", "B", "C"), c("D", "E"), byrow = TRUE ) k <- 1 for (i in 1:2) { for (j in 1:3) { expect_equal(a[i, j]$ggally_check_val, k) k <- k + 1 } } a <- ggmatrix( plotList, 2, 3, c("A", "B", "C"), c("D", "E"), byrow = FALSE ) k <- 1 for (j in 1:3) { for (i in 1:2) { expect_equal(a[i, j]$ggally_check_val, k) k <- k + 1 } } a }) test_that("missing plot", { plotList <- list() for (i in c(1, 3, 5)) { p <- ggally_text(paste("Plot #", i, sep = "")) p$ggally_check_val <- i plotList[[i]] <- p } a <- ggmatrix( plotList, 2, 3, c("A", "B", "C"), c("D", "E"), byrow = TRUE ) # reaches code where there are more cells than plots ggally_expect_doppelganger("not-enough-plots", a) expect_equal(a[1, 1]$ggally_check_val, 1) expect_equal(a[1, 3]$ggally_check_val, 3) expect_equal(a[2, 2]$ggally_check_val, 5) }) test_that("str.ggmatrix", { pm <- ggpairs(tips, 1:3, upper = "blank") pm[1, 1] <- pm[1, 1] txt <- capture.output({ str(pm) }) expect_true(any(str_detect(txt, "Custom str.ggmatrix output:"))) txt <- capture.output({ str(pm, raw = TRUE) }) expect_false(any(str_detect(txt, "Custom str.ggmatrix output:"))) }) test_that("blank", { pm <- ggpairs(tips, 1:2) pm[1, 2] <- "blank" ggally_expect_doppelganger("blank-1_2", pm) pm[2, 1] <- NULL ggally_expect_doppelganger("blank-1_2-2_1", pm) expect_equal(length(pm$plots), 4) expect_error( { pm[2, 2] <- "not blank" }, "character values \\(besides `'blank'`\\)" ) }) test_that("proportions", { pm <- ggpairs(iris, 1:2, mapping = ggplot2::aes(color = Species)) pm[2, 2] <- pm[2, 2] + ggplot2::coord_flip() pm2 <- ggmatrix( data = iris, pm$plots, ncol = 2, nrow = 2, xProportions = c(2, 1), yProportions = c(1, 2), title = "big plot, small marginals" ) ggally_expect_doppelganger("proportions", pm2) # turn on progress for a quick plot # TODO - turn test back on when it uses message properly # testthat::expect_message(print(pm2, progress = TRUE)) }) test_that("ggmatrix_gtable progress", { pm <- ggpairs(iris, 1:2) expect_silent({ pg <- ggmatrix_gtable(pm) }) lifecycle::expect_deprecated({ ggmatrix_gtable(pm, progress = TRUE) }) lifecycle::expect_deprecated({ ggmatrix_gtable(pm, progress_format = "asdfasdf :plot_i") }) }) # # printShowStrips <- c(TRUE, FALSE) # if (i <= length(printShowStrips)) { # printShowStrip <- printShowStrips[i] # } else { # printShowStrip <- NULL # } # test_that("ggmatrix proportions", { expect_error( { ggmatrix_proportions("not auto", tips, 1:ncol(tips)) }, "need to be non-NA" ) expect_error( { ggmatrix_proportions(NA, tips, 1:ncol(tips)) }, "need to be non-NA" ) expect_error( { ggmatrix_proportions(c(1, NA, 1, 1, 1, 1, 1), tips, 1:ncol(tips)) }, "need to be non-NA" ) expect_equal( ggmatrix_proportions("auto", tips, 1:ncol(tips)), c(2.5, 2.5, 2, 2, 4, 2, 2.5) ) expect_equal( ggmatrix_proportions(1, tips, 1:ncol(tips)), c(1, 1, 1, 1, 1, 1, 1) ) expect_equal( ggmatrix_proportions(NULL, tips, 1:ncol(tips)), NULL ) }) GGally/tests/testthat/test-ggcorr.R0000644000176200001440000000643415047655270017040 0ustar liggesusersdata(flea) test_that("limits", { ggally_expect_doppelganger("flea", ggcorr(flea[, -1])) ggally_expect_doppelganger("flea-limits", ggcorr(flea[, -1], limits = TRUE)) ggally_expect_doppelganger( "flea-no-limits", ggcorr(flea[, -1], limits = FALSE) ) ggally_expect_doppelganger( "flea-null-limits", ggcorr(flea[, -1], limits = NULL) ) ggally_expect_doppelganger( "flea-big-limits", ggcorr(flea[, -1], limits = c(-5, 5)) ) ggally_expect_doppelganger( "flea-small-limits", ggcorr(flea[, -1], limits = c(-0.5, 0.5)) ) }) test_that("examples", { # Default output. p <- ggcorr(flea[, -1]) expect_equal(length(p$layers), 2) # Labelled output, with coefficient transparency. p <- ggcorr(flea[, -1], label = TRUE, label_alpha = TRUE, name = "") expect_equal(length(p$layers), 3) # Custom options. p <- ggcorr( flea[, -1], geom = "circle", max_size = 6, size = 3, hjust = 0.75, nbreaks = 6, angle = -45, palette = "PuOr" # colorblind safe, photocopy-able ) expect_equal(length(p$layers), 3) p <- ggcorr(flea[, -1], label = TRUE, name = "") expect_equal(length(p$layers), 3) # test other combinations of geoms + color scales ggcorr(flea[, -1], nbreaks = 4, palette = "PuOr") ggcorr(flea[, -1], nbreaks = 4, geom = "circle") ggcorr(flea[, -1], geom = "text") ggcorr(flea[, -1], geom = "text", limits = FALSE) ggcorr(flea[, -1], nbreaks = 4, geom = "text") ggcorr(flea[, -1], nbreaks = 4, palette = "PuOr", geom = "text") ggcorr(flea[, -1], label = TRUE, label_alpha = 0.5) }) test_that("non-numeric data", { expect_warning(ggcorr(flea), "not numeric") }) test_that("null midpoint", { expect_message(ggcorr(flea[, -1], midpoint = NULL), "Color gradient") }) test_that("further options", { ggally_expect_doppelganger( "geom-circle", ggcorr(flea[, -1], geom = "circle") ) ggally_expect_doppelganger( "geom-circle-no-limits", ggcorr(flea[, -1], geom = "circle", limits = FALSE) ) ggally_expect_doppelganger( "geom-tile", ggcorr(flea[, -1], geom = "tile", nbreaks = 3) ) ggally_expect_doppelganger( "geom-tile-no-limits", ggcorr(flea[, -1], geom = "tile", limits = FALSE) ) expect_error(ggcorr(flea[, -1], layout.exp = "a"), "incorrect `layout.exp`") ggally_expect_doppelganger("layout.exp", ggcorr(flea[, -1], layout.exp = 1)) }) test_that("data.matrix", { p <- ggcorr(data.matrix(flea[, -1])) expect_equal(length(p$layers), 2) }) test_that("cor_matrix", { p <- ggcorr(data = NULL, cor_matrix = cor(flea[, -1], use = "pairwise")) expect_equal(length(p$layers), 2) }) test_that("other geoms", { expect_error(ggcorr(flea[, -1], geom = "hexbin"), "incorrect geom") ggally_expect_doppelganger( "geom-blank", ggcorr(flea[, -1], geom = "blank") ) }) test_that("backwards compatibility", { ggally_expect_doppelganger( "method-everything", ggcorr(flea[, -1], method = "everything") ) }) test_that("label with round gives same size corr values and all corr squares", { cors <- matrix( c(1, 0, .001, 0, 1, .2, .001, .2, 1), nrow = 3, byrow = TRUE ) row.names(cors) <- colnames(cors) <- c("X1", "X2", "X3") p <- ggcorr(data = NULL, cor_matrix = cors, label = TRUE, label_round = 2) ggally_expect_doppelganger("label-round-2", p) }) GGally/tests/testthat/test-ggally_trends.R0000644000176200001440000000635015027521001020366 0ustar liggesuserstest_that("example", { data(tips) ggally_expect_doppelganger( "point", ggplot(tips) + aes(x = day, y = total_bill) + geom_point() ) ggally_expect_doppelganger( "geom-default", ggplot(tips) + aes(x = day, y = total_bill) + stat_weighted_mean() ) ggally_expect_doppelganger( "geom-line", ggplot(tips) + aes(x = day, y = total_bill, group = 1) + stat_weighted_mean(geom = "line") ) ggally_expect_doppelganger( "geom-line-grouped", ggplot(tips) + aes(x = day, y = total_bill, colour = sex, group = sex) + stat_weighted_mean(geom = "line") ) ggally_expect_doppelganger( "geom-bar-dodge", ggplot(tips) + aes(x = day, y = total_bill, fill = sex) + stat_weighted_mean(geom = "bar", position = "dodge") ) # computing a proportion on the fly ggally_expect_doppelganger( "geom-bar-dodge-percent", ggplot(tips) + aes(x = day, y = as.integer(smoker == "Yes"), fill = sex) + stat_weighted_mean(geom = "bar", position = "dodge") + scale_y_continuous(labels = scales::label_percent()) ) # taking into account some weights d <- as.data.frame(Titanic) ggally_expect_doppelganger( "titanic", ggplot(d) + aes( x = Class, y = as.integer(Survived == "Yes"), weight = Freq, fill = Sex ) + geom_bar(stat = "weighted_mean", position = "dodge") + scale_y_continuous(labels = scales::label_percent()) + labs(y = "Survived") ) tips_f <- tips tips_f$day <- factor(tips$day, c("Thur", "Fri", "Sat", "Sun")) # Numeric variable ggally_expect_doppelganger( "trends", ggally_trends(tips_f, mapping = aes(x = day, y = total_bill)) ) ggally_expect_doppelganger( "trends-color", ggally_trends(tips_f, mapping = aes(x = day, y = total_bill, colour = time)) ) # Binary variable ggally_expect_doppelganger( "trends-binary", ggally_trends(tips_f, mapping = aes(x = day, y = smoker)) ) ggally_expect_doppelganger( "trends-binary-color", ggally_trends(tips_f, mapping = aes(x = day, y = smoker, colour = sex)) ) # Discrete variable with 3 or more categories ggally_expect_doppelganger( "trends-many", ggally_trends(tips_f, mapping = aes(x = smoker, y = day)) ) ggally_expect_doppelganger( "trends-many-color", ggally_trends(tips_f, mapping = aes(x = smoker, y = day, color = sex)) ) # Include zero on Y axis ggally_expect_doppelganger( "trends-incl-zero-false", ggally_trends( tips_f, mapping = aes(x = day, y = total_bill), include_zero = TRUE ) ) ggally_expect_doppelganger( "trends-incl-zero-true", ggally_trends( tips_f, mapping = aes(x = day, y = smoker), include_zero = TRUE ) ) # Change line size ggally_expect_doppelganger( "trends-size-3", ggally_trends( tips_f, mapping = aes(x = day, y = smoker, colour = sex), linewidth = 3 ) ) # Define weights with the appropriate aesthetic d <- as.data.frame(Titanic) ggally_expect_doppelganger( "trends-titanic", ggally_trends( d, mapping = aes(x = Class, y = Survived, weight = Freq, color = Sex), include_zero = TRUE ) ) }) GGally/tests/testthat/helper-options.R0000644000176200001440000000031014562447013017526 0ustar liggesusersrq <- function(...) { suppressPackageStartupMessages(require(..., quietly = TRUE)) } with_options <- function(opts, expr) { old_opts <- options(opts) on.exit(options(old_opts)) force(expr) } GGally/tests/testthat/test-ggnetworkmap.R0000644000176200001440000001726015047655266020266 0ustar liggesusersif ("package:igraph" %in% search()) { detach("package:igraph") } skip_if(!rq(network)) skip_if(!rq(sna)) skip_if(!rq(maps)) skip_if(!rq(ggplot2)) skip_if(!rq(intergraph)) # test igraph conversion skip_if_not_installed("geosphere") # first 500 rows of http://datasets.flowingdata.com/tuts/maparcs/airports.csv # avoids downloading the dataset to test the package airports <- read.csv(test_path("data/airports.csv"), header = TRUE) rownames(airports) <- airports$iata # select some random flights set.seed(123) flights <- data.frame( origin = sample(airports[200:400, ]$iata, 200, replace = TRUE), destination = sample(airports[200:400, ]$iata, 200, replace = TRUE) ) # convert to network flights <- network(flights, directed = TRUE) # add geographic coordinates flights %v% "lat" <- airports[network.vertex.names(flights), "lat"] flights %v% "lon" <- airports[network.vertex.names(flights), "long"] # drop isolated airports delete.vertices(flights, which(degree(flights) < 2)) # compute degree centrality flights %v% "degree" <- degree(flights, gmode = "digraph") # add random groups flights %v% "mygroup" <- sample( letters[1:4], network.size(flights), replace = TRUE ) # create a map of the USA usa <- ggplot(map_data("usa"), aes(x = long, y = lat)) + geom_polygon( aes(group = group), color = "grey65", fill = "#f9f9f9", linewidth = 0.2 ) test_that("basic drawing", { # no map p <- ggnetworkmap(net = flights, size = 2) expect_true(is.null(nrow(p$data))) # overlay network data to map p <- ggnetworkmap(usa, flights, size = 2) expect_false(is.null(nrow(p$data))) }) test_that("great circles", { p <- ggnetworkmap(usa, flights, size = 2, great.circles = TRUE) expect_equal(length(p$layers), 3) expect_equal(get("aes_params", envir = p$layers[[3]])$colour, "black") }) test_that("node groups", { p <- ggnetworkmap( usa, flights, size = 2, great.circles = TRUE, node.group = degree ) expect_equal(length(p$layers), 3) expect_true(is.null(get("aes_params", envir = p$layers[[3]])$colour)) expect_equal( mapping_string(get("mapping", envir = p$layers[[3]])$colour), ".ngroup" ) p <- ggnetworkmap( usa, flights, size = 2, great.circles = TRUE, node.color = "red" ) expect_equal( mapping_string(get("aes_params", envir = p$layers[[3]])$colour), "\"red\"" ) }) test_that("ring groups", { p <- ggnetworkmap( usa, flights, size = 2, great.circles = TRUE, node.group = degree, ring.group = mygroup ) expect_equal(length(p$layers), 3) expect_true(is.null(get("aes_params", envir = p$layers[[3]])$colour)) expect_equal( mapping_string(get("mapping", envir = p$layers[[3]])$colour), ".rgroup" ) expect_equal( mapping_string(get("mapping", envir = p$layers[[3]])$fill), ".ngroup" ) }) test_that("segment color", { p <- ggnetworkmap( usa, flights, size = 2, great.circles = TRUE, node.group = degree, ring.group = mygroup, segment.color = "cornflowerblue" ) expect_equal(length(p$layers), 3) expect_true(is.null(get("aes_params", envir = p$layers[[3]])$colour)) expect_equal( mapping_string(get("mapping", envir = p$layers[[3]])$colour), ".rgroup" ) expect_equal( mapping_string(get("mapping", envir = p$layers[[3]])$fill), ".ngroup" ) expect_equal( mapping_string(get("aes_params", envir = p$layers[[2]])$colour), "\"cornflowerblue\"" ) }) test_that("weight", { p <- ggnetworkmap( usa, flights, size = 2, great.circles = TRUE, node.group = degree, ring.group = mygroup, segment.color = "cornflowerblue", weight = degree ) expect_equal(length(p$layers), 3) expect_true(is.null(get("aes_params", envir = p$layers[[3]])$colour)) expect_equal( mapping_string(get("mapping", envir = p$layers[[3]])$colour), ".rgroup" ) expect_equal( mapping_string(get("mapping", envir = p$layers[[3]])$fill), ".ngroup" ) expect_equal( mapping_string(get("aes_params", envir = p$layers[[2]])$colour), "\"cornflowerblue\"" ) expect_equal( mapping_string(get("mapping", envir = p$layers[[3]])$size), ".weight" ) }) test_that("labels", { p <- ggnetworkmap( usa, flights, size = 2, great.circles = TRUE, node.group = degree, ring.group = mygroup, segment.color = "cornflowerblue", weight = degree, label.nodes = TRUE ) expect_equal(length(p$layers), 4) expect_true(is.null(get("aes_params", envir = p$layers[[3]])$colour)) expect_equal( mapping_string(get("mapping", envir = p$layers[[3]])$colour), ".rgroup" ) expect_equal( mapping_string(get("mapping", envir = p$layers[[3]])$fill), ".ngroup" ) expect_equal( mapping_string(get("aes_params", envir = p$layers[[2]])$colour), "\"cornflowerblue\"" ) expect_equal( mapping_string(get("mapping", envir = p$layers[[3]])$size), ".weight" ) expect_equal( mapping_string(get("mapping", envir = p$layers[[4]])$label), ".label" ) expect_true(is.null(get("aes_params", envir = p$layers[[2]])$arrow)) }) test_that("arrows", { p <- ggnetworkmap( usa, flights, size = 2, great.circles = TRUE, node.group = degree, ring.group = mygroup, segment.color = "cornflowerblue", weight = degree, label.nodes = TRUE, arrow.size = 0.2 ) expect_equal(length(p$layers), 4) expect_true(is.null(get("aes_params", envir = p$layers[[3]])$colour)) expect_equal( mapping_string(get("mapping", envir = p$layers[[3]])$colour), ".rgroup" ) expect_equal( mapping_string(get("mapping", envir = p$layers[[3]])$fill), ".ngroup" ) expect_equal( mapping_string(get("aes_params", envir = p$layers[[2]])$colour), "\"cornflowerblue\"" ) expect_equal( mapping_string(get("mapping", envir = p$layers[[3]])$size), ".weight" ) expect_equal( mapping_string(get("mapping", envir = p$layers[[4]])$label), ".label" ) # look at geom_params for arrow info expect_true(is.list(get("geom_params", envir = p$layers[[2]])$arrow)) }) test_that("labels", { expect_error(ggnetworkmap(usa, flights, label.nodes = c("A", "B"))) testLabels <- paste("L", 1:network.size(flights), sep = "") # does logical check p <- ggnetworkmap(usa, flights, label.nodes = testLabels) ## PROBLEM HERE: why would vertex.names be equal to testLabels? ## expect_equal(get("data", p$layers[[4]])$.label, testLabels) # does vertex.names check p <- ggnetworkmap(usa, flights, label.nodes = TRUE) expect_true(!is.null(get("data", p$layers[[4]])$.label)) # does id check flights2 <- flights flights2 %v% "id" <- testLabels p <- ggnetworkmap(usa, flights2, label.nodes = TRUE) expect_true(!is.null(get("data", p$layers[[4]])$.label)) }) ### --- test arrow.size test_that("arrow.size", { expect_error( ggnetworkmap(net = flights, arrow.size = -1), "incorrect `arrow.size`" ) expect_warning( ggnetworkmap( net = network(as.matrix(flights), directed = FALSE), arrow.size = 1 ), "`arrow.size` ignored" ) }) ### --- test network coercion test_that("network coercion", { expect_warning( ggnetworkmap(net = network(matrix(1, nrow = 2, ncol = 2), loops = TRUE)), "self-loops" ) expect_error(ggnetworkmap(net = 1:2), "network object") expect_error( ggnetworkmap(net = network(data.frame(1:2, 3:4), hyper = TRUE)), "hyper" ) expect_error( ggnetworkmap(net = network(data.frame(1:2, 3:4), multiple = TRUE)), "multiplex graphs" ) }) ### --- test igraph functionality test_that("igraph conversion", { if (rq(igraph) && rq(intergraph)) { n <- asIgraph(flights) p <- ggnetworkmap(net = n) expect_equal(length(p$layers), 2) } }) GGally/tests/testthat/test-ggnostic.R0000644000176200001440000000503215047655266017370 0ustar liggesuserstest_that("fn_switch", { fn1 <- function(data, mapping, ...) { return(1) } fn2 <- function(data, mapping, ...) { return(2) } fn3 <- function(data, mapping, ...) { return(3) } fn5 <- function(data, mapping, ...) { return(5) } fn <- fn_switch(list(A = fn1, B = fn2, C = fn3), "value") dummy_dt <- data.frame(A = rnorm(100), B = rnorm(100), C = rnorm(100)) chars <- c("A", "B", "C") for (i in 1:3) { mapping <- ggplot2::aes(value = !!as.name(chars[i])) expect_equal(fn(dummy_dt, mapping), i) } fn <- fn_switch(list(A = fn1, default = fn5), "value") expect_equal(fn(dummy_dt, ggplot2::aes(value = !!as.name("A"))), 1) expect_equal(fn(dummy_dt, ggplot2::aes(value = !!as.name("B"))), 5) expect_equal(fn(dummy_dt, ggplot2::aes(value = !!as.name("C"))), 5) fn <- fn_switch(list(A = fn1), "value") expect_equal(fn(dummy_dt, ggplot2::aes(value = !!as.name("A"))), 1) expect_error( fn(dummy_dt, ggplot2::aes(value = !!as.name("B"))), "function could not be found" ) }) test_that("model_beta_label", { mod <- lm(mpg ~ wt + qsec + am, mtcars) expect_equal(model_beta_label(mod), c("wt***", "qsec***", "am*")) expect_equal(model_beta_label(mod, lmStars = FALSE), c("wt", "qsec", "am")) }) test_that("ggnostic mtcars", { mtc <- mtcars mtc$am <- c("0" = "automatic", "1" = "manual")[as.character(mtc$am)] mod <- lm(mpg ~ wt + qsec + am, data = mtc) continuous_type <- list( .resid = wrap(ggally_nostic_resid, method = "loess"), .std.resid = wrap(ggally_nostic_std_resid, method = "loess") ) pm <- ggnostic( mod, mapping = ggplot2::aes(), columnsY = c( "mpg", ".fitted", ".se.fit", ".resid", ".std.resid", ".sigma", ".hat", ".cooksd" ), continuous = continuous_type, progress = FALSE ) ggally_expect_doppelganger("custom-y", pm) pm <- ggnostic( mod, mapping = ggplot2::aes(color = am), legend = c(1, 3), continuous = continuous_type, progress = FALSE ) ggally_expect_doppelganger("legend", pm) }) test_that("error checking", { get_cols <- function(cols) { match_nostic_columns( cols, c("mpg", broom_columns()), "columnsY" ) } expect_equal( get_cols(c(".resid", ".sig", ".hat", ".c")), c(".resid", ".sigma", ".hat", ".cooksd") ) expect_error( get_cols(c( "not_there", ".fitted", ".se.fit", ".resid", ".std.resid", ".sigma", ".hat", ".cooksd" )), "Could not match `columnsY`" ) }) GGally/tests/testthat/test-ggnet.R0000644000176200001440000001773215047655266016671 0ustar liggesusersif ("package:igraph" %in% search()) { detach("package:igraph") } skip_if_not(rq(network)) # network objects skip_if_not(rq(sna)) # placement and centrality skip_if_not(rq(ggplot2)) # grammar of graphics skip_if_not(rq(grid)) # arrows skip_if_not(rq(scales)) # sizing skip_if_not(rq(intergraph)) # test igraph conversion test_that("examples", { skip_if_not_installed("network") ### --- start: documented examples set.seed(54321) # random adjacency matrix x <- 10 ndyads <- x * (x - 1) density <- x / ndyads m <- matrix(0, nrow = x, ncol = x) dimnames(m) <- list(letters[1:x], letters[1:x]) m[row(m) != col(m)] <- runif(ndyads) < density m # random undirected network n <- network::network(m, directed = FALSE) n lifecycle::expect_deprecated( ggnet(n, label = TRUE, alpha = 1, color = "white", segment.color = "black") ) # random groups g <- sample(letters[1:3], 10, replace = TRUE) # color palette p <- c("a" = "steelblue", "b" = "forestgreen", "c" = "tomato") lifecycle::expect_deprecated({ p <- ggnet(n, node.group = g, node.color = p, label = TRUE, color = "white") }) expect_equal(length(p$layers), 3) expect_true(!is.null(p$mapping$colour)) ### --- end: documented examples ### --- test deprecations # test mode = "geo" xy <- gplot.layout.circle(n) n %v% "lon" <- xy[, 1] n %v% "lat" <- xy[, 2] lifecycle::expect_deprecated({ # mode = "geo" lifecycle::expect_deprecated({ # ggnet ggnet(n, mode = "geo") }) }) lifecycle::expect_deprecated({ # names = c(x, y) lifecycle::expect_deprecated({ # ggnet ggnet(n, names = c("a", "b")) }) }) # test quantize.weights with_options(list(warn = 2), { expect_error(ggnet(n, quantize.weights = TRUE)) }) lifecycle::expect_deprecated({ # subset.threshold lifecycle::expect_deprecated({ # ggnet suppressMessages({ ggnet(n, subset.threshold = 2) }) }) }) lifecycle::expect_deprecated({ # top8.nodes lifecycle::expect_deprecated({ # ggnet suppressMessages({ ggnet(n, top8.nodes = TRUE) }) }) }) lifecycle::expect_deprecated({ # trim.labels lifecycle::expect_deprecated({ # ggnet suppressMessages({ ggnet(n, trim.labels = TRUE) }) }) }) # # test subset.threshold by removing all nodes # expect_warning( # expect_error( # ggnet(n, subset.threshold = 11), # "NA/NaN/Inf" # ), # "NaNs produced" # ) # # p <- ggnet(n, mode = "geo") # expect_equal(p$data$X1, xy[, 1]) # expect_equal(p$data$X2, xy[, 2]) # Be quiet about lifecycle messages from here on old_opts <- options(lifecycle_verbosity = "quiet") on.exit(options(old_opts), add = TRUE) # test user-submitted weights ggnet(n, weight = sample(1:2, 10, replace = TRUE)) # test segment.label x <- sample(letters, network.edgecount(n)) p <- ggnet(n, segment.label = x) expect_true(mapping_string(p$layers[[2]]$mapping$x) == "midX") expect_true(mapping_string(p$layers[[2]]$mapping$y) == "midY") # test weight.cut n %v% "weights" <- 1:10 ggnet(n, weight.method = "weights", weight.cut = TRUE) ### --- test errors in set_node expect_error(ggnet(n, group = NA), "incorrect") expect_error(ggnet(n, group = 1:3), "incorrect") expect_error(ggnet(n, label = TRUE, label.size = -10:-1), "incorrect") expect_error(ggnet(n, size = "phono"), "incorrect") ggnet(n, group = "weights") ### --- test errors in set_edges expect_error(ggnet(n, segment.label = NA), "incorrect") expect_error(ggnet(n, segment.label = 1:3), "incorrect") expect_error(ggnet(n, segment.label = -11:-1), "incorrect") # unnecessary # expect_error(ggnet(n, size = "phono"), "incorrect") n %e% "weights" <- sample(1:2, network.edgecount(n), replace = TRUE) ggnet(n, segment.label = "weights") ggnet(n, segment.label = "a") ### --- test mode = c(x, y) ggnet(n, mode = matrix(1, ncol = 2, nrow = 10)) ggnet(n, mode = c("lon", "lat")) expect_error(ggnet(n, mode = c("xx", "yy")), "not found") n %v% "abc" <- "abc" expect_error(ggnet(n, mode = c("abc", "abc")), "not numeric") expect_error( ggnet(n, mode = matrix(1, ncol = 2, nrow = 9)), "coordinates length" ) ### --- test arrow.size expect_error(ggnet(n, arrow.size = -1), "incorrect `arrow.size`") expect_warning(ggnet(n, arrow.size = 1), "`arrow.size` ignored") ### --- test arrow.gap suppressWarnings(expect_error( ggnet(n, arrow.size = 12, arrow.gap = -1), "incorrect `arrow.gap`" )) suppressWarnings(expect_warning( ggnet(n, arrow.size = 12, arrow.gap = 0.1), "`arrow.gap` ignored" # network is undirected; arrow.gap ignored )) suppressWarnings(expect_warning( ggnet(n, arrow.size = 12, arrow.gap = 0.1), "`arrow.size` ignored" # network is undirected; arrow.size ignored )) m <- network::network(m, directed = TRUE) ggnet(m, arrow.size = 12, arrow.gap = 0.05) ### --- test degree centrality ggnet(n, weight = "degree") ### --- test weight.min, weight.max and weight.cut # test weight.min suppressMessages({ expect_error( ggnet(n, weight = "degree", weight.min = -1), "incorrect `weight.min`" ) expect_message( ggnet(n, weight = "degree", weight.min = 1), "`weight.min` removed" ) expect_warning( ggnet(n, weight = "degree", weight.min = 99), "removed all nodes" ) }) # test weight.max expect_error( ggnet(n, weight = "degree", weight.max = -1), "incorrect `weight.max`" ) expect_message( ggnet(n, weight = "degree", weight.max = 99), "`weight.max` removed" ) suppressMessages({ expect_warning( ggnet(n, weight = 1:10, weight.max = 0.5), "removed all nodes" ) }) expect_error(ggnet(n, weight = "abc"), "incorrect `weight.method`") # test weight.cut expect_error(ggnet(n, weight.cut = NA), "incorrect `weight.cut`") expect_error(ggnet(n, weight.cut = "a"), "incorrect `weight.cut`") expect_warning(ggnet(n, weight.cut = 3), "`weight.cut` ignored") ggnet(n, weight = "degree", weight.cut = 3) ### --- test node.group and node.color expect_warning(ggnet(n, group = 1:10, node.color = "blue"), "unequal length") ### --- test node labels and label sizes ggnet(n, label = letters[1:10], color = "white") ggnet(n, label = "abc", color = "white", label.size = 4, size = 12) expect_error( ggnet(n, label = letters[1:10], label.size = "abc"), "incorrect `label.size`" ) ### --- test node placement expect_error(ggnet(n, mode = "xyz"), "unsupported") expect_error(ggnet(n, mode = letters[1:3]), "incorrect `mode`") ### --- test label.trim expect_error( ggnet(n, label = TRUE, label.trim = "xyz"), "incorrect `label.trim`" ) ggnet(n, label = TRUE, color = "white", label.trim = 1) ggnet(n, label = TRUE, color = "white", label.trim = toupper) ### --- test layout.exp expect_error(ggnet(n, layout.exp = "xyz")) ggnet(n, layout.exp = 0.1) ### --- test bipartite functionality # weighted adjacency matrix bip <- data.frame( event1 = c(1, 2, 1), event2 = c(0, 0, 3), event3 = c(1, 1, 0), row.names = letters[1:3] ) # weighted bipartite network bip <- network( bip, matrix.type = "bipartite", ignore.eval = FALSE # names.eval = "weights" ) # test bipartite mode ggnet(bip, group = "mode") ### --- test network coercion expect_warning( ggnet(network(matrix(1, nrow = 2, ncol = 2), loops = TRUE)), "self-loops" ) expect_error(ggnet(1:2), "network object") expect_error(ggnet(network(data.frame(1:2, 3:4), hyper = TRUE)), "hyper") expect_error( ggnet(network(data.frame(1:2, 3:4), multiple = TRUE)), "multiplex graphs" ) ### --- test igraph functionality if (rq(igraph) && rq(intergraph)) { # test igraph conversion p <- ggnet(asIgraph(n)) expect_null(p$guides$colour) expect_equal(length(p$layers), 2) # test igraph degree ggnet(n, weight = "degree") expect_true(TRUE) } }) GGally/tests/testthat/test-gglyph.R0000644000176200001440000000722015023054163017025 0ustar liggesusersdata(nasa) nasaLate <- nasa[ nasa$date >= as.POSIXct("1998-01-01") & nasa$lat >= 20 & nasa$lat <= 40 & nasa$long >= -80 & nasa$long <= -60, ] do_glyph <- function(...) { glyphs( nasaLate, # no lint "long", "day", "lat", "surftemp", height = 2.37, width = 2.38, ... ) } do_gg <- function(dt) { ggplot2::ggplot(dt, ggplot2::aes(gx, gy, group = gid)) + add_ref_lines(dt, color = "red", size = 0.5) + add_ref_boxes(dt, color = "blue") + ggplot2::geom_path() + ggplot2::theme_bw() + ggplot2::labs(x = "", y = "") + ggplot2::xlim(-80, -60) + ggplot2::ylim(20, 40) } test_that("examples", { dt <- do_glyph() expect_true(all(c("gx", "gy", "gid") %in% names(dt))) expect_true(all(names(nasaLate) %in% names(dt))) p <- do_gg(dt) expect_equal(length(p$layers), 3) expect_equal( as.character(get("aes_params", envir = p$layers[[1]])$colour), "red" ) expect_equal( as.character(get("aes_params", envir = p$layers[[2]])$colour), "blue" ) }) test_that("message", { expect_message( glyphs(nasaLate, "long", "day", "lat", "surftemp", height = 1), "Using width 2.38" ) expect_message( glyphs(nasaLate, "long", "day", "lat", "surftemp", width = 1), "Using height 2.37" ) }) test_that("scales", { dt <- do_glyph(x_scale = log) dt$dayLog <- dt$day dt$day <- NULL dtm <- merge(dt, nasaLate) expect_true(all(dtm$dayLog == log(dtm$day))) dt <- do_glyph(y_scale = log) dt$surftempLog <- dt$surftemp dt$surftemp <- NULL dtm <- merge(dt, nasaLate) expect_true(all(dtm$surftempLog == log(dtm$surftemp))) for (scale_fn in c(range01, max1, mean0, min0, rescale01, rescale11)) { dt <- do_glyph(y_scale = scale_fn) dt$surftempScaled <- dt$surftemp dt$surftemp <- NULL dtm <- merge(dt, nasaLate) expect_true(all(dtm$surftempScaled != dtm$surftemp)) } for (scale_fn in c(rescale01, rescale11)) { scale_fn2 <- function(x) { scale_fn(x, xlim = c(1 / 4, 3 / 4)) } dt <- do_glyph(y_scale = scale_fn2) dt$surftempScaled <- dt$surftemp dt$surftemp <- NULL dtm <- merge(dt, nasaLate) expect_true(all(dtm$surftempScaled != dtm$surftemp)) } }) test_that("polar", { dt <- do_glyph(polar = TRUE) expect_equal(attr(dt, "polar"), TRUE) # idk how to test that polar happened p <- do_gg(dt) expect_equal(length(p$layers), 3) }) test_that("fill", { dt <- do_glyph() # idk how to test that polar happened do_gg_fill <- function(...) { ggplot2::ggplot(dt, ggplot2::aes(gx, gy, group = gid)) + add_ref_lines(dt, color = "red", size = 0.5) + add_ref_boxes(dt, color = "blue", ...) + ggplot2::geom_path() + ggplot2::theme_bw() + ggplot2::labs(x = "", y = "") + ggplot2::xlim(-80, -60) + ggplot2::ylim(20, 40) } p <- do_gg_fill(fill = "green") expect_equal( mapping_string(get("aes_params", envir = p$layers[[2]])$fill), "\"green\"" ) p <- do_gg_fill(var_fill = "gid") expect_equal( mapping_string(get("mapping", envir = p$layers[[2]])$fill), "fill" ) }) test_that("print", { dt <- do_glyph() txt <- capture.output(print(dt)) expect_equal(txt[length(txt) - 2], "Cartesian glyphplot: ") expect_equal(txt[length(txt) - 1], " Size: [2.38, 2.37]") expect_equal(txt[length(txt) - 0], " Major axes: long, lat") dt <- do_glyph(polar = TRUE) txt <- capture.output(print(dt)) expect_equal(txt[length(txt) - 2], "Polar glyphplot: ") expect_equal(txt[length(txt) - 1], " Size: [2.38, 2.37]") expect_equal(txt[length(txt) - 0], " Major axes: long, lat") txt <- capture.output(print(rel(0.95))) expect_equal(txt, "[1] 0.95 *") }) GGally/tests/testthat/test-crosstalk.R0000644000176200001440000000206515047655266017563 0ustar liggesuserstest_that("crosstalk works with ggduo and ggpairs", { skip_if_not_installed("crosstalk") sd <- try(crosstalk::SharedData$new(iris[1:4]), silent = TRUE) if (inherits(sd, "try-error")) { skip("crosstalk data can not be initialized") } expect_silent({ pm <- ggpairs(sd) }) expect_error( { pm <- ggpairs(sd, 3:5) }, "Make sure your numeric" ) expect_error( { pm <- ggpairs(sd, c("Petal.Length", "Petal.Width", crosstalk_key())) }, "Columns in `columns` not" ) expect_silent({ pm <- ggduo(sd) }) expect_error( { pm <- ggduo(sd, c(1:2, 5), 3:5) }, "Make sure your numeric" ) expect_error( { pm <- ggduo( sd, c("Sepal.Length", "Sepal.Width", crosstalk_key()), c("Petal.Length", "Petal.Width") ) }, "Columns in `columnsX` not" ) expect_error( { pm <- ggduo( sd, c("Sepal.Length", "Sepal.Width"), c("Petal.Length", "Petal.Width", crosstalk_key()) ) }, "Columns in `columnsY` not" ) }) GGally/tests/testthat/test-ggmatrix_add.R0000644000176200001440000000302515047655266020205 0ustar liggesusersdata(tips) test_that("add", { pm <- ggpairs(tips) expect_true(is.null(pm$title)) expect_true(is.null(pm$xlab)) expect_true(is.null(pm$ylab)) pm1 <- pm + labs(title = "my title", x = "x label", y = "y label") expect_equal(pm1$title, "my title") expect_equal(pm1$xlab, "x label") expect_equal(pm1$ylab, "y label") expect_true(is.null(pm$gg)) # first add pm2 <- pm + ggplot2::theme_bw() expect_true(!is.null(pm2$gg)) # second to nth add pm3 <- pm + ggplot2::theme_bw() expect_true(!is.null(pm3$gg)) # bad add expect_error(pm + 3, "`ggmatrix()` does not know how to add", fixed = TRUE) # adding scale pm4 <- pm + ggplot2::scale_fill_brewer() expect_false(identical(pm$plots[[1]], pm4$plots[[1]])) expect_false(identical(pm$plots[[2]], pm4$plots[[2]])) # change only some subplots pm5 <- add_to_ggmatrix(pm, ggplot2::coord_equal(), cols = 1) expect_false(identical(pm$plots[[1]], pm5$plots[[1]])) expect_true(identical(pm$plots[[2]], pm5$plots[[2]])) }) test_that("add_list", { pm <- ggpairs(tips, 1:2) pm1 <- pm + list( ggplot2::labs(x = "x title"), ggplot2::labs(title = "list title") ) expect_equal(pm1$xlab, "x title") expect_equal(pm1$title, "list title") }) test_that("v1_ggmatrix_theme", { old_opts <- options(lifecycle_verbosity = "quiet") on.exit(options(old_opts), add = TRUE) expect_snapshot( { pm <- ggpairs(tips, 1:2) pm1 <- pm + v1_ggmatrix_theme() expect_true(is.null(pm$gg)) expect_true(!is.null(pm1$gg)) } ) }) GGally/tests/testthat/test-ggtable.R0000644000176200001440000000251415027521001017133 0ustar liggesuserssuppressMessages(require(broom)) test_that("example", { skip_if_not_installed("Hmisc") reg <- lm( Sepal.Length ~ Sepal.Width + Petal.Length + Petal.Width, data = iris ) ggally_expect_doppelganger("lm", ggcoef(reg)) data(tips) ggally_expect_doppelganger( "tips", ggtable(tips, "smoker", c("day", "time", "sex")) ) # displaying row proportions ggally_expect_doppelganger( "tips-cells", ggtable(tips, "smoker", c("day", "time", "sex"), cells = "row.prop") ) # filling cells with residuals ggally_expect_doppelganger( "tips-fill-std_resid", ggtable( tips, "smoker", c("day", "time", "sex"), fill = "std.resid", legend = 1 ) ) ggally_expect_doppelganger( "tips-fill-resid", ggtable(tips, "smoker", c("day", "time", "sex"), fill = "resid", legend = 1) ) # if continuous variables are provided, just displaying some summary statistics ggally_expect_doppelganger( "tips-continuous", ggtable(tips, c("smoker", "total_bill"), c("day", "time", "sex", "tip")) ) # specifying weights d <- as.data.frame(Titanic) ggally_expect_doppelganger( "titanic-weight-freq", ggtable( d, "Survived", c("Class", "Sex", "Age"), mapping = aes(weight = Freq), cells = "row.prop", fill = "std.resid" ) ) }) GGally/tests/testthat/helper-doppelganger.R0000644000176200001440000000120215027521001020466 0ustar liggesusersggally_expect_doppelganger <- function(name, plot) { if (packageVersion("ggplot2") < "3.5.2.9001") { # Keep snapshot around, but skip the test vdiffr__str_standardise <- getFromNamespace("str_standardise", "vdiffr") file <- paste0( vdiffr__str_standardise(name), ".svg" ) testthat::announce_snapshot_file(name = file) # Go through the whole process of writing the SVG # to ensure that the file can be created, using all the gtable code vdiffr::write_svg(plot, tempfile(file, fileext = ".svg")) expect_true(TRUE) # Avoid empty test } else { vdiffr::expect_doppelganger(name, plot) } } GGally/tests/testthat/test-gglegend.R0000644000176200001440000000521115027521001017277 0ustar liggesuserslibrary(ggplot2) test_that("examples", { histPlot <- ggplot(diamonds, aes(price, fill = cut)) + geom_histogram(binwidth = 500) (right <- histPlot) (bottom <- histPlot + theme(legend.position = "bottom")) (top <- histPlot + theme(legend.position = "top")) (left <- histPlot + theme(legend.position = "left")) expect_legend <- function(name, p) { plotLegend <- grab_legend(p) expect_true(inherits(plotLegend, "gtable")) expect_true(inherits(plotLegend, "gTree")) expect_true(inherits(plotLegend, "grob")) ggally_expect_doppelganger(paste0("pos-", name), plotLegend) } expect_legend("right", right) expect_legend("bottom", bottom) expect_legend("top", top) expect_legend("left", left) }) test_that("legend", { # display regular plot ggally_expect_doppelganger( "legend", ggally_points( iris, ggplot2::aes(Sepal.Length, Sepal.Width, color = Species) ) ) # Make a function that will only print the legend points_legend <- gglegend(ggally_points) l <- points_legend( iris, ggplot2::aes(Sepal.Length, Sepal.Width, color = Species) ) ggally_expect_doppelganger("points", l) # produce the sample legend plot, but supply a string that 'wrap' understands same_points_legend <- gglegend("points") expect_identical( attr(attr(points_legend, "fn"), "original_fn"), attr(attr(same_points_legend, "fn"), "original_fn") ) # Complicated examples custom_legend <- wrap(gglegend("points"), size = 6) p <- custom_legend( iris, ggplot2::aes(Sepal.Length, Sepal.Width, color = Species) ) ggally_expect_doppelganger("custom", p) expect_true(inherits(p, "gtable")) expect_true(inherits(p, "gTree")) expect_true(inherits(p, "grob")) # Use within ggpairs expect_silent({ pm <- ggpairs( iris, 1:2, mapping = ggplot2::aes(color = Species), upper = list(continuous = gglegend("points")) ) }) ggally_expect_doppelganger("legend-pm", pm) # Use within ggpairs expect_silent({ pm <- ggpairs( iris, 1:2, mapping = ggplot2::aes(color = Species) ) pm[1, 2] <- points_legend( iris, ggplot2::aes(Sepal.Width, Sepal.Length, color = Species) ) }) ggally_expect_doppelganger("internal-legend", pm) }) test_that("plotNew", { points_legend <- gglegend(ggally_points) ggally_expect_doppelganger( "plotNew-default", points_legend( iris, ggplot2::aes(Sepal.Length, Sepal.Width, color = Species) ) ) expect_silent( print( points_legend( iris, ggplot2::aes(Sepal.Length, Sepal.Width, color = Species) ), plotNew = TRUE ) ) }) GGally/tests/testthat/test-ggally_colbar.R0000644000176200001440000000522015027521001020324 0ustar liggesuserstest_that("example", { d <- as.data.frame(Titanic) p <- ggplot(d) + aes(x = Class, fill = Survived, weight = Freq, by = Class) + geom_bar(position = "fill") + geom_text(stat = "prop", position = position_fill(.5)) ggally_expect_doppelganger("titanic", p) ggally_expect_doppelganger("titanic-facet", p + facet_grid(~Sex)) ggally_expect_doppelganger( "titanic-dodge", ggplot(d) + aes(x = Class, fill = Survived, weight = Freq) + geom_bar(position = "dodge") + geom_text( aes(by = Survived), stat = "prop", position = position_dodge(0.9), vjust = "bottom" ) ) ggally_expect_doppelganger( "titanic-stack", ggplot(d) + aes(x = Class, fill = Survived, weight = Freq, by = 1) + geom_bar() + geom_text( aes(label = scales::percent(after_stat(prop), accuracy = 1)), stat = "prop", position = position_stack(.5) ) ) data(tips) ggally_expect_doppelganger( "tips", ggally_rowbar(tips, mapping = aes(x = smoker, y = sex)) ) # change labels' size ggally_expect_doppelganger( "tips-size8", ggally_colbar(tips, mapping = aes(x = smoker, y = sex), size = 8) ) # change labels' colour and use bold ggally_expect_doppelganger( "tips-color-white", ggally_colbar( tips, mapping = aes(x = smoker, y = sex), colour = "white", fontface = "bold" ) ) # display number of observations instead of proportions ggally_expect_doppelganger( "tips-label", ggally_colbar( tips, mapping = aes(x = smoker, y = sex, label = after_stat(count)) ) ) # custom bar width ggally_expect_doppelganger( "tips-bar-width", ggally_colbar( tips, mapping = aes(x = smoker, y = sex), geom_bar_args = list(width = .5) ) ) # change format of labels ggally_expect_doppelganger( "tips-label-custom", ggally_colbar( tips, mapping = aes(x = smoker, y = sex), label_format = scales::label_percent(accuracy = .01, decimal.mark = ",") ) ) ggally_expect_doppelganger( "ggduo-titanic", ggduo( data = as.data.frame(Titanic), mapping = aes(weight = Freq), columnsX = "Survived", columnsY = c("Sex", "Class", "Age"), types = list(discrete = "rowbar"), legend = 1 ) ) }) test_that("stat_prop() works with an y aesthetic", { d <- as.data.frame(Titanic) p <- ggplot(d) + aes(y = Class, fill = Survived, weight = Freq, by = Class) + geom_bar(position = "fill") + geom_text(stat = "prop", position = position_fill(.5)) ggally_expect_doppelganger("titanic-stat-prop", p) }) GGally/tests/testthat/test-ggparcoord.R0000644000176200001440000002635115047655266017711 0ustar liggesusersset.seed(123) data(diamonds, package = "ggplot2") diamonds.samp <- diamonds[sample(1:dim(diamonds)[1], 100), ] iris2 <- iris iris2$alphaLevel <- c("setosa" = 0.2, "versicolor" = 0.3, "virginica" = 0)[ iris2$Species ] test_that("stops", { # basic parallel coordinate plot, using default settings # ggparcoord(data = diamonds.samp, columns = c(1, 5:10)) # this time, color by diamond cut expect_error( ggparcoord( data = diamonds.samp, columns = c(1, 5:10), groupColumn = NULL, order = "anyClass" ), "can't use the `order` methods " ) expect_error( ggparcoord( data = diamonds.samp, columns = c(1, 5:10), groupColumn = NULL, order = "allClass" ), "can't use the `order` methods " ) expect_error( ggparcoord( data = diamonds.samp, columns = c(1, 5:10), groupColumn = c(1, 2) ), "invalid value for `groupColumn`" ) expect_error( ggparcoord(data = diamonds.samp, columns = c(1, 5:10), groupColumn = 1i), "invalid value for `groupColumn`" ) expect_error( ggparcoord( data = diamonds.samp, columns = c(1, 5:10), groupColumn = 2, scale = "notValid" ), "invalid value for `scale`" ) expect_error( ggparcoord( data = diamonds.samp, columns = c(1, 5:10), groupColumn = 2, centerObsID = nrow(diamonds.samp) + 10 ), "invalid value for `centerObsID`" ) expect_error( ggparcoord( data = diamonds.samp, columns = c(1, 5:10), groupColumn = 2, missing = "notValid" ), "invalid value for `missing`" ) expect_error( ggparcoord( data = diamonds.samp, columns = c(1, 5:10), groupColumn = 2, order = "notValid" ), "invalid value for `order`" ) expect_error( ggparcoord( data = diamonds.samp, columns = c(1, 5:10), groupColumn = 2, order = 1i ), "invalid value for `order`" ) expect_error( ggparcoord( data = diamonds.samp, columns = c(1, 5:10), groupColumn = 2, showPoints = 1 ), "invalid value for `showPoints`" ) expect_error( ggparcoord( data = diamonds.samp, columns = c(1, 5:10), groupColumn = 2, alphaLines = "notAColumn" ), "`alphaLines` column is missing in data" ) tmpDt <- diamonds.samp tmpDt$price[1] <- NA range(tmpDt$price) expect_error( ggparcoord( data = tmpDt, columns = c(1, 5:10), groupColumn = 2, alphaLines = "price" ), "missing data in `alphaLines` column" ) expect_error( ggparcoord( data = diamonds.samp, columns = c(1, 5:10), groupColumn = 2, alphaLines = "price" ), "invalid value for `alphaLines` column; max range " ) expect_error( ggparcoord( data = diamonds.samp, columns = c(1, 5:10), groupColumn = 2, alphaLines = -0.1 ), "invalid value for `alphaLines`; must be a scalar value" ) expect_error( ggparcoord( data = diamonds.samp, columns = c(1, 5:10), groupColumn = 2, alphaLines = 1.1 ), "invalid value for `alphaLines`; must be a scalar value" ) expect_error( ggparcoord( data = diamonds.samp, columns = c(1, 5:10), groupColumn = 2, boxplot = 1 ), "invalid value for `boxplot`" ) expect_error( ggparcoord( data = diamonds.samp, columns = c(1, 5:10), groupColumn = 2, shadeBox = c(1, 2) ), "invalid value for `shadeBox`; must be a single color" ) expect_error( ggparcoord( data = diamonds.samp, columns = c(1, 5:10), groupColumn = 2, shadeBox = "notacolor" ), "invalid value for `shadeBox`; must be a valid R color" ) expect_error( ggparcoord( diamonds.samp, columns = c(1, 5:10), groupColumn = 2, splineFactor = NULL ), "invalid value for `splineFactor`" ) }) test_that("alphaLines", { p <- ggparcoord( data = iris2, columns = 1:4, groupColumn = 5, order = "anyClass", showPoints = TRUE, title = "Parallel Coordinate Plot for the Iris Data", alphaLines = "alphaLevel" ) expect_equal(length(p$layers), 2) expect_equal( mapping_string(get("mapping", envir = p$layers[[1]])$alpha), "alphaLevel" ) }) test_that("splineFactor", { ## Use splines on values, rather than lines (all produce the same result) columns <- c(1, 5:10) p1 <- ggparcoord(diamonds.samp, columns, groupColumn = 2, splineFactor = TRUE) p2 <- ggparcoord(diamonds.samp, columns, groupColumn = 2, splineFactor = 3) pList <- list(p1, p2) for (p in pList) { expect_equal( mapping_string(get("mapping", envir = p$layers[[1]])$x), "spline.x" ) expect_equal( mapping_string(get("mapping", envir = p$layers[[1]])$y), "spline.y" ) tmp <- unique(as.numeric( get("data", envir = p$layers[[1]])$ggally_splineFactor )) expect_true((tmp == 3) || (tmp == 21)) } p <- ggparcoord( data = iris2, columns = 1:4, groupColumn = 5, splineFactor = 3, alphaLines = "alphaLevel" ) expect_equal( mapping_string(get("mapping", p$layers[[1]])$alpha), "alphaLevel" ) p <- ggparcoord( data = iris2, columns = 1:4, groupColumn = 5, splineFactor = 3, showPoints = TRUE ) expect_equal(length(p$layers), 2) expect_equal(mapping_string(get("mapping", p$layers[[1]])$x), "spline.x") expect_equal(mapping_string(get("mapping", p$layers[[2]])$y), "value") }) test_that("splineFactor as is", { iris2 <- iris iris2$alphaLevel <- c("setosa" = 0.2, "versicolor" = 0.3, "virginica" = 0)[ iris2$Species ] k <- 4 p_no_visible_spline <- ggparcoord( data = iris2, columns = seq_len(k), groupColumn = 5, splineFactor = I(k) ) p_single_split_between <- ggparcoord( data = iris2, columns = seq_len(k), groupColumn = 5, splineFactor = I(2 * k) ) ggally_expect_doppelganger( "ggparcoord-splineFactor-as-is-4", p_no_visible_spline ) ggally_expect_doppelganger( "ggparcoord-splineFactor-as-is-8", p_single_split_between ) }) test_that("groupColumn", { ds2 <- diamonds.samp ds2$color <- mapping_string(ds2$color) # column 3 has a character # column 4 has a factor p <- ggparcoord(data = ds2, columns = c(1, 3:10), groupColumn = 2) expect_true("color" %in% levels(p$data$variable)) expect_true("clarity" %in% levels(p$data$variable)) expect_true(is.numeric(p$data$value)) expect_equal(mapping_string(p$mapping$colour), colnames(ds2)[2]) p <- ggparcoord( data = ds2, columns = c( "carat", "color", "clarity", "depth", "table", "price", "x", "y", "z" ), order = c(1, 3:10), groupColumn = "cut" ) expect_true("color" %in% levels(p$data$variable)) expect_true("clarity" %in% levels(p$data$variable)) expect_true(is.numeric(p$data$value)) expect_equal(levels(p$data$cut), levels(ds2$cut)) # group column is a regular column ## factor # p <- ggparcoord(data = ds2, columns = c(1, 3:10), groupColumn = 4) # expect_true("clarity" %in% levels(p$data$variable)) ## character # p <- ggparcoord(data = ds2, columns = c(1, 3:10), groupColumn = 3) # expect_true("color" %in% levels(p$data$variable)) ## numeric # p <- ggparcoord(data = ds2, columns = c(1, 3:10), groupColumn = 1) # expect_true("carat" %in% levels(p$data$variable)) }) test_that("scale", { for (scale in c( "std", "robust", "uniminmax", "globalminmax", "center", "centerObs" )) { p <- ggparcoord( data = diamonds.samp, columns = c(1, 5:10), groupColumn = 2, scale = scale ) } expect_true(TRUE) }) test_that("missing", { ds2 <- diamonds.samp ds2[3, 1] <- NA for (missing in c("exclude", "mean", "median", "min10", "random")) { p <- ggparcoord( data = ds2, columns = c(1, 5:10), groupColumn = 2, missing = missing ) } expect_true(TRUE) }) test_that("order", { if (requireNamespace("scagnostics", quietly = TRUE)) { for (ordering in c( "Outlying", "Skewed", "Clumpy", "Sparse", "Striated", "Convex", "Skinny", "Stringy", "Monotonic" )) { p <- ggparcoord( data = diamonds.samp, columns = c(1, 5:10), groupColumn = 2, order = ordering ) expect_true(all( levels(p$data) != c("carat", "depth", "table", "price", "x", "y", "z") )) } } for (ordering in c("skewness", "allClass", "anyClass")) { p <- ggparcoord( data = diamonds.samp, columns = c(1, 5:10), groupColumn = 2, order = ordering ) expect_true(all( levels(p$data) != c("carat", "depth", "table", "price", "x", "y", "z") )) } }) test_that("missing and order(anyClass)", { ds2 <- diamonds.samp ds2[3, 1] <- NA missing_options <- c("exclude", "mean", "median", "min10", "random") for (missing in missing_options) { p <- ggparcoord( data = ds2, columns = c(1, 5:10), groupColumn = 2, missing = missing, order = "anyClass" ) } expect_true(TRUE) }) test_that("basic", { # no color supplied p <- ggparcoord(data = diamonds.samp, columns = c(1, 5:10)) expect_true(is.null(p$mapping$colour)) # color supplied p <- ggparcoord(data = diamonds.samp, columns = c(1, 5:10), groupColumn = 2) expect_false(is.null(p$mapping$colour)) # title supplied ttl <- "Parallel Coord. Plot of Diamonds Data" p <- ggparcoord(data = diamonds.samp, columns = c(1, 5:10), title = ttl) expect_equal(get_labs(p)$title, ttl) col <- "blue" p <- ggparcoord(data = diamonds.samp, columns = c(1, 5:10), shadeBox = col) expect_equal(length(p$layers), 2) expect_equal(get("aes_params", envir = p$layers[[1]])$colour, col) p <- ggparcoord( data = diamonds.samp, columns = c(1, 5:10), mapping = ggplot2::aes(size = 1) ) expect_equal(length(p$layers), 1) expect_equal(p$mapping$size, 1) }) test_that("size", { p <- ggparcoord( data = diamonds.samp, columns = c(1, 5:10), mapping = ggplot2::aes(size = gear) ) expect_equal(mapping_string(p$mapping$size), "gear") p <- ggparcoord(data = diamonds.samp, columns = c(1, 5:10)) + ggplot2::aes(size = gear) expect_equal(mapping_string(p$mapping$size), "gear") }) test_that("columns containing only a single value do not cause an scaling error", { df <- data.frame(obs = 1:5, var1 = sample(10, 5), var2 = rep(3, 5)) # no scaling expect_silent(ggparcoord(data = df, columns = 1:3, scale = "globalminmax")) # requires scaling, must not throw an errror due to scaling the single values (to NaN) expect_silent(ggparcoord(data = df, columns = 1:3, scale = "uniminmax")) df2 <- data.frame(df, var3 = factor(c("a", "b", "c", "a", "c"))) # requires scaling, must not throw an errror due to scaling the single values (to NaN) expect_silent(ggparcoord(data = df2, columns = 1:4, scale = "uniminmax")) df3 <- data.frame(df2, var4 = factor(c("d", "d", "d", "d", "d"))) expect_silent(ggparcoord(data = df3, columns = 1:4, scale = "uniminmax")) expect_silent(ggparcoord(data = df3, columns = 1:4, scale = "robust")) expect_silent(ggparcoord(data = df3, columns = 1:4, scale = "std")) }) GGally/tests/testthat/test-ggmatrix_location.R0000644000176200001440000001002115023051677021245 0ustar liggesusersexpect_loc_grid <- function(loc, to_loc) { testthat::expect_equal( colnames(loc), colnames(to_loc) ) testthat::expect_equal( nrow(loc), nrow(to_loc) ) loc <- loc[order(loc$row, loc$col), ] to_loc <- to_loc[order(to_loc$row, to_loc$col), ] testthat::expect_equal( loc$row, to_loc$row ) testthat::expect_equal( loc$col, to_loc$col ) } expect_rows_cols <- function(loc, rows, cols) { to_loc <- expand.grid(row = rows, col = cols) expect_loc_grid(loc, to_loc) } test_that("rows work", { pm <- ggpairs(tips) expect_rows_cols( ggmatrix_location(pm, rows = c(3, 5)), rows = c(3, 5), cols = 1:7 ) expect_rows_cols( ggmatrix_location(pm, rows = 1), rows = 1, cols = 1:7 ) expect_error( ggmatrix_location(pm, rows = TRUE), "numeric" ) expect_error( ggmatrix_location(pm, rows = "1"), "numeric" ) }) test_that("cols work", { pm <- ggpairs(tips) expect_rows_cols( ggmatrix_location(pm, cols = c(3, 5)), rows = 1:7, cols = c(3, 5) ) expect_rows_cols( ggmatrix_location(pm, cols = 1), rows = 1:7, cols = 1 ) expect_error( ggmatrix_location(pm, cols = TRUE), "numeric" ) expect_error( ggmatrix_location(pm, cols = "1"), "numeric" ) }) test_that("location logical", { pm <- ggpairs(tips) expect_loc_grid( ggmatrix_location(pm, location = TRUE), expand.grid(row = 1:7, col = 1:7) ) expect_warning( ggmatrix_location(pm, location = FALSE) ) }) test_that("location character", { pm <- ggpairs(tips) to_loc <- expand.grid(row = 1:7, col = 1:7) expect_loc_grid( ggmatrix_location(pm, location = "all"), to_loc ) expect_loc_grid( ggmatrix_location(pm, location = "none"), subset(to_loc, FALSE) ) expect_loc_grid( ggmatrix_location(pm, location = "upper"), subset(to_loc, col > row) ) expect_loc_grid( ggmatrix_location(pm, location = "lower"), subset(to_loc, col < row) ) expect_loc_grid( ggmatrix_location(pm, location = "diag"), subset(to_loc, col == row) ) expect_error( ggmatrix_location(pm, location = "unknown") ) }) test_that("location matrix", { pm <- ggpairs(tips) to_loc <- subset( expand.grid(row = 1:7, col = 1:7), row %in% c(3, 5) | col %in% c(3, 5) ) mat <- matrix(FALSE, nrow = 7, ncol = 7, byrow = TRUE) mat[, c(3, 5)] <- TRUE mat[c(3, 5), ] <- TRUE expect_loc_grid( ggmatrix_location(pm, location = mat), to_loc ) expect_loc_grid( ggmatrix_location(pm, location = as.data.frame(mat)), to_loc ) mat2 <- mat mat2[TRUE] <- FALSE expect_loc_grid( ggmatrix_location(pm, location = mat2), subset(to_loc, FALSE) ) expect_error( ggmatrix_location(pm, location = mat[, 1:6]) ) expect_error( ggmatrix_location(pm, location = mat[1:6, ]) ) expect_error( ggmatrix_location(pm, location = cbind(mat, 1)) ) expect_error( ggmatrix_location(pm, location = rbind(mat, 1)) ) }) test_that("location matrix", { pm <- ggpairs(tips) to_loc <- expand.grid(row = 1:7, col = 1:7) expect_loc_grid( ggmatrix_location(pm), expand.grid(row = 1:7, col = 1:7) ) expect_error( ggmatrix_location(pm, location = expand.grid(row = 1:7, col = 2:8)) ) expect_error( ggmatrix_location(pm, location = expand.grid(row = 2:8, col = 1:7)) ) expect_error( ggmatrix_location(pm, location = expand.grid(row = 1:7, col = 0:6)) ) expect_error( ggmatrix_location(pm, location = expand.grid(row = 0:6, col = 1:7)) ) expect_error( ggmatrix_location(pm, location = expand.grid(row = 1:7, col = c(1:6, NA))) ) expect_error( ggmatrix_location(pm, location = expand.grid(row = c(1:6, NA), col = 1:7)) ) }) test_that("location recursion", { pm <- ggpairs(tips) to_loc <- expand.grid(row = 1:7, col = 1:7) expect_loc_grid( ggmatrix_location(pm), expand.grid(row = 1:7, col = 1:7) ) expect_loc_grid( ggmatrix_location(pm, location = ggmatrix_location(pm)), expand.grid(row = 1:7, col = 1:7) ) }) GGally/tests/testthat/data/0000755000176200001440000000000013663637143015360 5ustar liggesusersGGally/tests/testthat/data/airports.csv0000644000176200001440000010545013663637143017745 0ustar liggesusers"iata","airport","city","state","country","lat","long" "00M","Thigpen ","Bay Springs","MS","USA",31.95376472,-89.23450472 "00R","Livingston Municipal","Livingston","TX","USA",30.68586111,-95.01792778 "00V","Meadow Lake","Colorado Springs","CO","USA",38.94574889,-104.5698933 "01G","Perry-Warsaw","Perry","NY","USA",42.74134667,-78.05208056 "01J","Hilliard Airpark","Hilliard","FL","USA",30.6880125,-81.90594389 "01M","Tishomingo County","Belmont","MS","USA",34.49166667,-88.20111111 "02A","Gragg-Wade ","Clanton","AL","USA",32.85048667,-86.61145333 "02C","Capitol","Brookfield","WI","USA",43.08751,-88.17786917 "02G","Columbiana County","East Liverpool","OH","USA",40.67331278,-80.64140639 "03D","Memphis Memorial","Memphis","MO","USA",40.44725889,-92.22696056 "04M","Calhoun County","Pittsboro","MS","USA",33.93011222,-89.34285194 "04Y","Hawley Municipal","Hawley","MN","USA",46.88384889,-96.35089861 "05C","Griffith-Merrillville ","Griffith","IN","USA",41.51961917,-87.40109333 "05F","Gatesville - City/County","Gatesville","TX","USA",31.42127556,-97.79696778 "05U","Eureka","Eureka","NV","USA",39.60416667,-116.0050597 "06A","Moton Municipal","Tuskegee","AL","USA",32.46047167,-85.68003611 "06C","Schaumburg","Chicago/Schaumburg","IL","USA",41.98934083,-88.10124278 "06D","Rolla Municipal","Rolla","ND","USA",48.88434111,-99.62087694 "06M","Eupora Municipal","Eupora","MS","USA",33.53456583,-89.31256917 "06N","Randall ","Middletown","NY","USA",41.43156583,-74.39191722 "06U","Jackpot/Hayden ","Jackpot","NV","USA",41.97602222,-114.6580911 "07C","Dekalb County","Auburn","IN","USA",41.30716667,-85.06433333 "07F","Gladewater Municipal","Gladewater","TX","USA",32.52883861,-94.97174556 "07G","Fitch H Beach","Charlotte","MI","USA",42.57450861,-84.81143139 "07K","Central City Municipal","Central City","NE","USA",41.11668056,-98.05033639 "08A","Wetumpka Municipal","Wetumpka","AL","USA",32.52943944,-86.32822139 "08D","Stanley Municipal","Stanley","ND","USA",48.30079861,-102.4063514 "08K","Harvard State","Harvard","NE","USA",40.65138528,-98.07978667 "08M","Carthage-Leake County","Carthage","MS","USA",32.76124611,-89.53007139 "09A","Butler-Choctaw County","Butler","AL","USA",32.11931306,-88.1274625 "09J","Jekyll Island","Jekyll Island","GA","USA",31.07447222,-81.42777778 "09K","Sargent Municipal","Sargent","NE","USA",41.63695083,-99.34038139 "09M","Charleston Municipal","Charleston","MS","USA",33.99150222,-90.078145 "09W","South Capitol Street","Washington","DC","USA",38.86872333,-77.00747583 "0A3","Smithville Municipal","Smithville","TN","USA",35.98531194,-85.80931806 "0A8","Bibb County","Centreville","AL","USA",32.93679056,-87.08888306 "0A9","Elizabethton Municipal","Elizabethton","TN","USA",36.37094306,-82.17374111 "0AK","Pilot Station","Pilot Station","AK","USA",61.93396417,-162.8929358 "0B1","Col. Dyke ","Bethel","ME","USA",44.42506444,-70.80784778 "0B4","Hartington Municipal","Hartington","NE","USA",42.60355556,-97.25263889 "0B5","Turners Falls","Montague","MA","USA",42.59136361,-72.52275472 "0B7","Warren-Sugar Bush","Warren","VT","USA",44.11672722,-72.82705806 "0B8","Elizabeth ","Fishers Island","NY","USA",41.25130806,-72.03161139 "0C0","Dacy","Chicago/Harvard","IL","USA",42.40418556,-88.63343222 "0C4","Pender Municipal","Pender","NE","USA",42.11388722,-96.72892556 "0D1","South Haven Municipal","South Haven","MI","USA",42.35083333,-86.25613889 "0D8","Gettysburg Municipal","Gettysburg","SD","USA",44.98730556,-99.9535 "0E0","Moriarty","Moriarty","NM","USA",34.98560639,-106.0094661 "0E8","Crownpoint","Crownpoint","NM","USA",35.71765889,-108.2015961 "0F2","Bowie Municipal","Bowie","TX","USA",33.60166667,-97.77556 "0F4","Loup City Municipal","Loup City","NE","USA",41.29028694,-98.99064278 "0F7","Fountainhead Lodge Airpark","Eufaula","OK","USA",35.38898833,-95.60165111 "0F8","William R Pogue Municipal","Sand Springs","OK","USA",36.17528,-96.15181028 "0F9","Tishomingo Airpark","Tishomingo","OK","USA",34.19592833,-96.67555694 "0G0","North Buffalo Suburban","Lockport","NY","USA",43.10318389,-78.70334583 "0G3","Tecumseh Municipal","Tecumseh","NE","USA",40.39944417,-96.17139694 "0G6","Williams County","Bryan","OH","USA",41.46736111,-84.50655556 "0G7","Finger Lakes Regional","Seneca Falls","NY","USA",42.88062278,-76.78162028 "0H1","Trego Wakeeney ","Wakeeney","KS","USA",39.0044525,-99.89289917 "0I8","Cynthiana-Harrison County","Cynthiana","KY","USA",38.36674167,-84.28410056 "0J0","Abbeville Municipal","Abbeville","AL","USA",31.60016778,-85.23882222 "0J4","Florala Municipal","Florala","AL","USA",31.04247361,-86.31156111 "0J6","Headland Municipal","Headland","AL","USA",31.364895,-85.30965556 "0K7","Humboldt Municipal","Humboldt","IA","USA",42.7360825,-94.24524167 "0L5","Goldfield","Goldfield","NV","USA",37.71798833,-117.2384119 "0L7","Jean","Jean","NV","USA",35.76827222,-115.3296378 "0L9","Echo Bay","Overton","NV","USA",36.31108972,-114.4638672 "0M0","Dumas Municipal","Dumas","AR","USA",33.8845475,-91.53429111 "0M1","Scott ","Parsons","TN","USA",35.63778,-88.127995 "0M4","Benton County","Camden","TN","USA",36.01122694,-88.12328833 "0M5","Humphreys County","Waverly","TN","USA",36.11659972,-87.73815889 "0M6","Panola County","Batesville","MS","USA",34.36677444,-89.90008917 "0M8","Byerley","Lake Providence","LA","USA",32.82587917,-91.187665 "0O3","Calaveras Co-Maury Rasmussen ","San Andreas","CA","USA",38.14611639,-120.6481733 "0O4","Corning Municipal","Corning","CA","USA",39.94376806,-122.1713781 "0O5","University","Davis","CA","USA",38.53146222,-121.7864906 "0Q5","Shelter Cove","Shelter Cove","CA","USA",40.02764333,-124.0733639 "0Q6","Shingletown","Shingletown","CA","USA",40.52210111,-121.8177683 "0R0","Columbia-Marion County","Columbia","MS","USA",31.29700806,-89.81282944 "0R1","Atmore Municipal","Atmore","AL","USA",31.01621528,-87.44675972 "0R3","Abbeville Chris Crusta Memorial","Abbeville","LA","USA",29.97576083,-92.08415167 "0R4","Concordia Parish","Vidalia","LA","USA",31.56683278,-91.50011889 "0R5","David G Joyce","Winnfield","LA","USA",31.96366222,-92.66026056 "0R7","Red River","Coushatta","LA","USA",31.99071694,-93.30739306 "0S7","Dorothy Scott","Oroville","WA","USA",48.958965,-119.4119622 "0S9","Jefferson County International","Port Townsend","WA","USA",48.04981361,-122.8012792 "0V2","Harriet Alexander ","Salida","CO","USA",38.53916389,-106.0458483 "0V3","Pioneer Village ","Minden","NE","USA",40.5149125,-98.94565083 "0V4","Brookneal/Campbell County","Brookneal","VA","USA",37.14172222,-79.01638889 "0V6","Mission Sioux","Mission","SD","USA",43.30694778,-100.6281936 "0V7","Kayenta","Kayenta","AZ","USA",36.70972139,-110.2367978 "10C","Galt","Chicago/Greenwood/Wonderlake","IL","USA",42.40266472,-88.37588917 "10D","Winsted Municipal","Winsted","MN","USA",44.94996278,-94.0669175 "10G","Holmes County","Millersburg","OH","USA",40.53716667,-81.95436111 "10N","Wallkill","Wallkill","NY","USA",41.62787111,-74.13375583 "10U","Owyhee","Owyhee","NV","USA",41.95323306,-116.1876014 "11A","Clayton Municipal","Clayton","AL","USA",31.88329917,-85.48491361 "11D","Clarion Cty","Clarion","PA","USA",41.22581222,-79.44098972 "11IS","Schaumburg Heliport","Chicago/Schaumburg","IL","USA",42.04808278,-88.05257194 "11J","Early County","Blakely","GA","USA",31.39698611,-84.89525694 "11R","Brenham Municipal","Brenham","TX","USA",30.219,-96.37427778 "12C","Rochelle Municipal","Rochelle","IL","USA",41.89300139,-89.07829 "12D","Tower Municipal","Tower","MN","USA",47.81833333,-92.29166667 "12J","Brewton Municipal","Brewton","AL","USA",31.05126306,-87.06796833 "12K","Superior Municipal","Superior","NE","USA",40.04636111,-98.06011111 "12Y","Le Sueur Municipal","Le Sueur","MN","USA",44.43746472,-93.91274083 "13C","Lakeview","Lakeview","MI","USA",43.45213722,-85.26480333 "13K","Eureka Municipal","Eureka","KS","USA",37.8515825,-96.29169806 "13N","Trinca","Andover","NJ","USA",40.96676444,-74.78016556 "14J","Carl Folsom","Elba","AL","USA",31.40988861,-86.08883583 "14M","Hollandale Municipal","Hollandale","MS","USA",33.18262167,-90.83065444 "14Y","Todd Field ","Long Prairie","MN","USA",45.89857556,-94.87391 "15F","Haskell Municipal","Haskell","TX","USA",33.19155556,-99.71793056 "15J","Cook County","Adel","GA","USA",31.13780556,-83.45308333 "15M","Luka ","Luka","MS","USA",34.7723125,-88.16587444 "15Z","McCarthy 2","McCarthy","AK","USA",61.43706083,-142.9037372 "16A","Nunapitchuk","Nunapitchuk","AK","USA",60.90582833,-162.4391158 "16G","Seneca County","Tiffin","OH","USA",41.09405556,-83.2125 "16J","Dawson Municipal","Dawson","GA","USA",31.74328472,-84.419285 "16S","Myrtle Creek Municipal","Myrtle Creek","OR","USA",42.99845056,-123.3095092 "17G","Port Bucyrus-Crawford County","Bucyrus","OH","USA",40.78141667,-82.97469444 "17J","Donalsonville Municipal","Donalsonville","GA","USA",31.00694444,-84.87761111 "17K","Boise City","Boise City","OK","USA",36.77430028,-102.5104364 "17M","Magee Municipal","Magee","MS","USA",31.86127139,-89.80285361 "17N","Cross Keys","Cross Keys","NJ","USA",39.70547583,-75.03300306 "17Z","Manokotak","Manokotak","AK","USA",58.98896583,-159.0499739 "18A","Franklin County","Canon","GA","USA",34.34010472,-83.13348333 "18I","McCreary County ","Pine Knot","KY","USA",36.69591306,-84.39160389 "19A","Jackson County","Jefferson","GA","USA",34.17402472,-83.56066528 "19M","C A Moore","Lexington","MS","USA",33.12546111,-90.02555694 "19N","Camden","Berlin","NJ","USA",39.77842056,-74.94780389 "19P","Port Protection SPB","Port Protection","AK","USA",56.32880417,-133.6100844 "1A3","Martin Campbell ","Copperhill","TN","USA",35.01619111,-84.34631083 "1A5","Macon County","Franklin","NC","USA",35.222595,-83.41904389 "1A6","Middlesboro-Bell County","Middlesboro","KY","USA",36.6106375,-83.73741611 "1A7","Jackson County","Gainesboro","TN","USA",36.39728139,-85.64164278 "1A9","Autauga County","Prattville","AL","USA",32.438775,-86.51044778 "1B0","Dexter Regional","Dexter","ME","USA",45.00839444,-69.23976722 "1B1","Columbia Cty","Hudson","NY","USA",42.29130028,-73.71031944 "1B3","Fair Haven","Fair Haven","VT","USA",43.61534389,-73.27455556 "1B9","Mansfield Municipal","Mansfield","MA","USA",42.00013306,-71.19677139 "1C5","Clow","Chicago/Plainfield","IL","USA",41.69597444,-88.12923056 "1D1","Milbank Municipal","Milbank","SD","USA",45.23053806,-96.56596556 "1D2","Canton -Plymouth - Mettetal","Plymouth","MI","USA",42.35003667,-83.45826833 "1D3","Platte Municipal","Platte","SD","USA",43.40332833,-98.82952972 "1D6","Hector Municipal","Hector","MN","USA",44.73107278,-94.71471333 "1D7","Webster Municipal","Webster","SD","USA",45.29329111,-97.51369889 "1D8","Redfield Municipal","Redfield","SD","USA",44.86247611,-98.52953972 "1F0","Downtown Ardmore","Ardmore","OK","USA",34.14698917,-97.12265194 "1F1","Lake Murray State Park","Overbrook","OK","USA",34.07509694,-97.10667917 "1F4","Madill Municipal","Madill","OK","USA",34.14040194,-96.81203222 "1F9","Bridgeport Municipal","Bridgeport","TX","USA",33.17533333,-97.82838889 "1G0","Wood County","Bowling Green","OH","USA",41.391,-83.63013889 "1G3","Kent State University","Kent","OH","USA",41.15186167,-81.41658306 "1G4","Grand Canyon West","Peach Springs","AZ","USA",35.99221,-113.8166164 "1G5","Freedom ","Medina","OH","USA",41.13144444,-81.76491667 "1G6","Michael ","Cicero","NY","USA",43.18166667,-76.12777778 "1H0","Creve Coeur","St Louis","MO","USA",38.72752,-90.50830417 "1H2","Effingham County Memorial","Effingham","IL","USA",39.07045083,-88.53351972 "1H3","Linn State Tech. College","Linn","MO","USA",38.47149444,-91.81531667 "1H8","Casey Municipal","Casey","IL","USA",39.30250917,-88.00406194 "1I5","Freehold","Freehold","NY","USA",42.36425,-74.06596806 "1I9","Delphi Municipal","Delphi","IN","USA",40.54281417,-86.68167194 "1J0","Tri-County","Bonifay","FL","USA",30.84577778,-85.60138889 "1K2","Lindsay Municipal","Lindsay","OK","USA",34.85007333,-97.58642028 "1K4","David J. Perry","Goldsby","OK","USA",35.1550675,-97.47039389 "1K5","Waynoka Municipal","Waynoka","OK","USA",36.56670028,-98.85231333 "1K9","Satanta Municipal","Satanta","KS","USA",37.45419111,-100.9921119 "1L0","St. John the Baptist Parish","Reserve","LA","USA",30.08720833,-90.58266528 "1L1","Lincoln Co","Panaca","NV","USA",37.78746444,-114.4216567 "1L7","Escalante Municipal","Escalante","UT","USA",37.74532639,-111.5701653 "1L9","Parowan","Parowan","UT","USA",37.85969694,-112.816055 "1M1","North Little Rock Municipal","No Lit Rock","AR","USA",34.83398056,-92.25792778 "1M2","Belzoni Municipal","Belzoni","MS","USA",33.14518056,-90.51528472 "1M4","Posey ","Haleyville","AL","USA",34.28034806,-87.60044139 "1M5","Portland Municipal","Portland","TN","USA",36.59287528,-86.47691028 "1M7","Fulton","Fulton","KY","USA",36.52589417,-88.91561611 "1MO","Mountain Grove Memorial","Mountain Grove","MO","USA",37.12071889,-92.311245 "1N2","Spadaro ","East Moriches","NY","USA",40.82787639,-72.74871083 "1N4","Woodbine Muni ","Woodbine","NJ","USA",39.21915,-74.794765 "1N7","Blairstown","Blairstown","NJ","USA",40.97114556,-74.99747556 "1N9","Allentown Queen City Muni","Allentown","PA","USA",40.57027778,-75.48830556 "1ND3","Hamry ","Kindred","ND","USA",46.6485775,-97.00564306 "1O1","Grandfield Municipal","Grandfield","OK","USA",34.23758944,-98.74200917 "1O2","Lampson ","Lakeport","CA","USA",38.99017472,-122.8997175 "1O3","Lodi","Lodi","CA","USA",38.20241667,-121.2684167 "1O4","Thomas Municipal","Thomas","OK","USA",35.73338222,-98.73063833 "1O6","Dunsmuir Municipal-Mott","Dunsmuir","CA","USA",41.26320889,-122.2719528 "1R1","Jena","Jena","LA","USA",31.671005,-92.15846722 "1R7","Brookhaven-Lincoln County","Brookhaven","MS","USA",31.6058475,-90.40931583 "1R8","Bay Minette Municipal","Bay Minette","AL","USA",30.87046278,-87.81738167 "1S0","Pierce County ","Puyallup","WA","USA",47.10391667,-122.2871944 "1S3","Tillitt ","Forsyth","MT","USA",46.27110639,-106.6239206 "1S5","Sunnyside Municipal","Sunnyside","WA","USA",46.32763139,-119.9705964 "1S6","Priest River Muni","Priest River","ID","USA",48.19018611,-116.9093644 "1U7","Bear Lake County","Paris","ID","USA",42.24714972,-111.33826 "1V0","Navajo State Park ","Navajo Dam","NM","USA",36.80833833,-107.6514444 "1V2","Grant County ","Hyannis","NE","USA",42.00942944,-101.7693439 "1V5","Boulder Muni","Boulder","CO","USA",40.03942972,-105.2258217 "1V6","Fremont County","Canon City","CO","USA",38.42838111,-105.1054994 "1V9","Blake ","Delta","CO","USA",38.78539722,-108.0636611 "20A","Robbins ","Oneonta","AL","USA",33.97231972,-86.37942722 "20M","Macon Municipal","Macon","MS","USA",33.13345889,-88.53559806 "20N","Kingston-Ulster","Kingston","NY","USA",41.9852525,-73.96409722 "20U","Beach","Beach","ND","USA",46.92362444,-103.9785389 "20V","McElroy Airfield","Kremmling","CO","USA",40.05367972,-106.3689467 "21D","Lake Elmo","St Paul","MN","USA",44.99748861,-92.85568111 "21F","Jacksboro Municipal","Jacksboro","TX","USA",33.228725,-98.14671083 "22B","Mountain Meadow Airstrip","Burlington","CT","USA",41.77287528,-73.01121667 "22I","Vinton County","McArthur","OH","USA",39.328125,-82.44182167 "22M","Pontotoc County","Pontotoc","MS","USA",34.27593833,-89.03839694 "22N","Carbon Cty-Jake Arner Memorial","Lehighton","PA","USA",40.80950889,-75.76149639 "23J","Herlong","Jacksonville","FL","USA",30.27778889,-81.80594722 "23M","Clarke County","Quitman","MS","USA",32.08487111,-88.73893389 "23N","Bayport Aerodrome","Bayport","NY","USA",40.75843139,-73.05372083 "23R","Devine Municipal","Devine","TX","USA",29.1384075,-98.94189028 "24A","Jackson County","Sylva","NC","USA",35.3168625,-83.20936806 "24J","Suwannee County","Live Oak","FL","USA",30.30105583,-83.02318778 "24N","Jicarilla Apache Nation","Dulce","NM","USA",36.828535,-106.8841914 "25J","Cuthbert-Randolph","Cuthbert","GA","USA",31.70016583,-84.82492194 "25M","Ripley ","Ripley","MS","USA",34.72226778,-89.01504944 "25R","International","Edinburg","TX","USA",26.44201083,-98.12945306 "26A","Ashland/Lineville","Ashland/Lineville","AL","USA",33.28761417,-85.80412861 "26N","Ocean City Muni cipal","Ocean City","NJ","USA",39.26347222,-74.60747222 "26R","Jackson County","Edna/Ganado","TX","USA",29.00101,-96.58194667 "26U","McDermitt State","McDermitt","OR","USA",42.00211083,-117.7231972 "27A","Elbert County-Patz ","Elberton","GA","USA",34.09519722,-82.81586417 "27D","Myers ","Canby","MN","USA",44.72801889,-96.26309972 "27J","Newberry Municipal","Newberry","SC","USA",34.30927778,-81.63972222 "27K","Georgetown-Scott County","Georgetown","KY","USA",38.23442528,-84.43468667 "28J","Kay Larkin","Palatka","FL","USA",29.65863889,-81.68855556 "29D","Grove City","Grove City","PA","USA",41.14597611,-80.16592194 "29G","Portage County","Ravenna","OH","USA",41.210195,-81.25163083 "29S","Gardiner","Gardiner","MT","USA",45.04993556,-110.7466008 "2A0","Mark Anton","Dayton","TN","USA",35.48624611,-84.93109722 "2A1","Jamestown Municipal","Jamestown","TN","USA",36.34970833,-84.94664472 "2A3","Larsen Bay","Larsen Bay","AK","USA",57.53510667,-153.9784169 "2A9","Kotlik","Kotlik","AK","USA",63.03116111,-163.5299278 "2AK","Lime Village","Lime Village","AK","USA",61.35848528,-155.4403508 "2B3","Parlin ","Newport","NH","USA",43.38812944,-72.18925417 "2B7","Pittsfield Municipal","Pittsfield","ME","USA",44.76852778,-69.37441667 "2B9","Post Mills","Post Mills","VT","USA",43.884235,-72.25370333 "2D1","Barber","Alliance","OH","USA",40.97089139,-81.09981889 "2D5","Oakes Municipal","Oakes","ND","USA",46.17301972,-98.07987556 "2F5","Lamesa Municipal","Lamesa","TX","USA",32.75627778,-101.9194722 "2F6","Skiatook Municipal","Skiatook","OK","USA",36.357035,-96.01138556 "2F7","Commerce Municipal","Commerce","TX","USA",33.29288889,-95.89641806 "2F8","Morehouse Memorial","Bastrop","LA","USA",32.75607944,-91.88057194 "2G2","Jefferson County Airpark","Steubenville","OH","USA",40.35944306,-80.70007806 "2G3","Connellsville","Connellsville","PA","USA",39.95893667,-79.65713306 "2G4","Garrett County","Oakland","MD","USA",39.58027778,-79.33941667 "2G9","Somerset County","Somerset","PA","USA",40.03911111,-79.01455556 "2H0","Shelby County","Shelbyville","IL","USA",39.41042861,-88.8454325 "2H2","Aurora Memorial Municipal","Aurora","MO","USA",36.96230778,-93.69531111 "2I0","Madisonville Municipal","Madisonville","KY","USA",37.35502778,-87.39963889 "2I5","Chanute","Rantoul","IL","USA",40.29355556,-88.14236111 "2IS","Airglades","Clewiston","FL","USA",26.74200972,-81.04978917 "2J2","Liberty County","Hinesville","GA","USA",31.78461111,-81.64116667 "2J3","Louisville Municipal","Louisville","GA","USA",32.98654083,-82.38568139 "2J5","Millen","Millen","GA","USA",32.89376972,-81.96511583 "2J9","Quincy Municipal","Quincy","FL","USA",30.59786111,-84.55741667 "2K3","Stanton County Municipal","Johnson","KS","USA",37.58271111,-101.73281 "2K4","Scott ","Mangum","OK","USA",34.89172583,-99.52675667 "2K5","Telida","Telida","AK","USA",63.39387278,-153.2689733 "2M0","Princeton-Caldwell County","Princeton","KY","USA",37.11560444,-87.85556944 "2M2","Lawrenceburg Municipal","Lawrenceburg","TN","USA",35.2343025,-87.25793222 "2M3","Sallisaw Municipal","Sallisaw","OK","USA",35.43816667,-94.80277778 "2M4","G. V. Montgomery","Forest","MS","USA",32.35347778,-89.48867944 "2M8","Charles W. Baker","Millington","TN","USA",35.27897583,-89.93147611 "2O1","Gansner ","Quincy","CA","USA",39.94378056,-120.9468983 "2O3","Angwin-Parrett ","Angwin","CA","USA",38.57851778,-122.4352572 "2O6","Chowchilla","Chowchilla","CA","USA",37.11244417,-120.2468406 "2O7","Independence","Independence","CA","USA",36.81382111,-118.2050956 "2O8","Hinton Municipal","Hinton","OK","USA",35.50592472,-98.34236111 "2P2","Washington Island","Washington Island","WI","USA",45.38620833,-86.92448056 "2Q3","Yolo Co-Davis/Woodland/Winters","Davis/Woodland/Winters","CA","USA",38.5790725,-121.8566322 "2R0","Waynesboro Municipal","Waynesboro","MS","USA",31.64599472,-88.63475667 "2R4","Peter Prince ","Milton","FL","USA",30.63762083,-86.99365278 "2R5","St Elmo","St Elmo","AL","USA",30.50190833,-88.27511667 "2R9","Karnes County","Kenedy","TX","USA",28.8250075,-97.86558333 "2S1","Vashon Municipal","Vashon","WA","USA",47.45815333,-122.4773506 "2S6","Sportsman Airpark","Newberg","OR","USA",45.29567333,-122.9553783 "2S7","Chiloquin State","Chiloquin","OR","USA",42.58319167,-121.8761261 "2S8","Wilbur","Wilbur","WA","USA",47.75320639,-118.7438936 "2T1","Muleshoe Municipal","Muleshoe","TX","USA",34.18513639,-102.6410981 "2V1","Stevens ","Pagosa Springs","CO","USA",37.277505,-107.0558742 "2V2","Vance Brand","Longmont","CO","USA",40.16367139,-105.1630369 "2V5","Wray Municipal","Wray","CO","USA",40.10032333,-102.24096 "2V6","Yuma Municipal","Yuma","CO","USA",40.10415306,-102.7129869 "2W5","Maryland","Indian Head","MD","USA",38.60053667,-77.07296917 "2W6","Captain Walter Francis Duke Regional ","Leonardtown","MD","USA",38.31536111,-76.55011111 "2Y3","Yakutat SPB","Yakutat","AK","USA",59.5624775,-139.7410994 "2Y4","Rockwell City Municipal","Rockwell City","IA","USA",42.38748056,-94.61803333 "31F","Gaines County","Seminole","TX","USA",32.67535389,-102.652685 "32M","Norfolk","Norfolk","MA","USA",42.12787528,-71.37033556 "32S","Stevensville","Stevensville","MT","USA",46.52511111,-114.0528056 "33J","Geneva Municipal","Geneva","AL","USA",31.05527778,-85.88033333 "33M","Water Valley ","Water Valley","MS","USA",34.16677639,-89.68619722 "33N","Delaware Airpark","Dover","DE","USA",39.21837556,-75.59642667 "33S","Pru ","Ritzville","WA","USA",47.12487194,-118.3927539 "34A","Laurens County","Laurens","SC","USA",34.50705556,-81.94719444 "35A","Union County, Troy Shelton ","Union","SC","USA",34.68680111,-81.64121167 "35D","Padgham ","Allegan","MI","USA",42.53098278,-85.82513556 "35S","Wasco State","Wasco","OR","USA",45.58944444,-120.6741667 "36K","Lakin","Lakin","KS","USA",37.96946389,-101.2554472 "36S","Happy Camp","Happy Camp","CA","USA",41.79067944,-123.3889444 "36U","Heber City Municipal/Russ McDonald ","Heber","UT","USA",40.48180556,-111.4288056 "37T","Calico Rock-Izard County","Calico Rock","AR","USA",36.16565278,-92.14523611 "37W","Harnett County","Erwin","NC","USA",35.37880028,-78.73362917 "38A","Shaktoolik","Shaktoolik","AK","USA",64.36263194,-161.2025369 "38S","Deer Lodge-City-County","Deer Lodge","MT","USA",46.38881583,-112.7669842 "38U","Wayne Wonderland","Loa","UT","USA",38.36247972,-111.5960164 "39N","Princeton","Princeton","NJ","USA",40.39834833,-74.65760361 "3A0","Grove Hill Municipal","Grove Hill","AL","USA",31.68932389,-87.7613875 "3A1","Folsom ","Cullman","AL","USA",34.26870833,-86.85833611 "3A2","New Tazewell Municipal","Tazewell","TN","USA",36.41008417,-83.55546167 "3A3","Anson County","Wadesboro","NC","USA",35.02397611,-80.08127333 "3AU","Augusta Municipal","Augusta","KS","USA",37.67162778,-97.07787222 "3B0","Southbridge Municipal","Southbridge","MA","USA",42.10092806,-72.03840833 "3B1","Greenville Municipal","Greenville","ME","USA",45.46302778,-69.55161111 "3B2","Marshfield","Marshfield","MA","USA",42.09824111,-70.67212083 "3B9","Chester","Chester","CT","USA",41.38390472,-72.50589444 "3BS","Jack Barstow","Midland","MI","USA",43.66291528,-84.261325 "3CK","Lake In The Hills","Lake In The Hills","IL","USA",42.20680306,-88.32304028 "3CM","James Clements Municipal","Bay City","MI","USA",43.54691667,-83.89550222 "3CU","Cable Union","Cable","WI","USA",46.19424889,-91.24640972 "3D2","Ephraim/Gibraltar","Ephraim","WI","USA",45.13535778,-87.18586556 "3D4","Frankfort Dow Memorial","Frankfort","MI","USA",44.62506389,-86.20061944 "3F3","De Soto Parish","Mansfield","LA","USA",32.07345972,-93.76551889 "3F4","Vivian","Vivian","LA","USA",32.86133333,-94.01015361 "3F7","Jones Memorial","Bristow","OK","USA",35.80685278,-96.42185556 "3FM","Fremont Municipal","Fremont","MI","USA",43.43890528,-85.99478 "3FU","Faulkton Municipal","Faulkton","SD","USA",45.03191861,-99.11566417 "3G3","Wadsworth Municipal","Wadsworth","OH","USA",41.00158222,-81.75513111 "3G4","Ashland County","Ashland","OH","USA",40.90297222,-82.25563889 "3G7","Williamson/Sodus","Williamson","NY","USA",43.23472222,-77.12097222 "3GM","Grand Haven Memorial Airpark","Grand Haven","MI","USA",43.03404639,-86.1981625 "3I2","Mason County","Point Pleasant","WV","USA",38.91463889,-82.09858333 "3I7","Phillipsburg","Phillipsburg","OH","USA",39.91344194,-84.40030889 "3J1","Ridgeland","Ridgeland","SC","USA",32.49268694,-80.99233028 "3J7","Greene County Airpark","Greensboro","GA","USA",33.59766667,-83.139 "3JC","Freeman ","Junction City","KS","USA",39.04327556,-96.84328694 "3K3","Syracuse-Hamilton County Municipal","Syracuse","KS","USA",37.99167972,-101.7462822 "3K6","St Louis-Metro East","Troy/Marine/St. Louis","IL","USA",38.73290861,-89.80656722 "3K7","Mark Hoard Memorial","Leoti","KS","USA",38.45696333,-101.3532161 "3LC","Logan County","Lincoln","IL","USA",40.15847222,-89.33497222 "3LF","Litchfield Municipal","Litchfield","IL","USA",39.16635306,-89.67489694 "3M7","Lafayette Municipal","Lafayette","TN","USA",36.518375,-86.05828083 "3M8","North Pickens ","Reform","AL","USA",33.38900611,-88.00557806 "3M9","Warren Municipal","Warren","AR","USA",33.56044333,-92.08538861 "3MY","Mt. Hawley Auxiliary","Peoria","IL","USA",40.79525917,-89.6134025 "3N6","Old Bridge","Old Bridge","NJ","USA",40.32988667,-74.34678694 "3N8","Mahnomen County ","Mahnomen","MN","USA",47.25996056,-95.92809778 "3ND0","Northwood Municipal","Northwood","ND","USA",47.72423333,-97.59042222 "3O1","Gustine","Gustine","CA","USA",37.26271722,-120.9632586 "3O3","Municipal","Purcell","OK","USA",34.97979444,-97.38586167 "3O4","Sayre Municipal","Sayre","OK","USA",35.16755222,-99.65787361 "3O5","Walters Municipal","Walters","OK","USA",34.37258444,-98.40588583 "3O7","Hollister Municipal","Hollister","CA","USA",36.89334528,-121.4102706 "3O9","Grand Lake Regional","Afton","OK","USA",36.5775775,-94.86190028 "3R0","Beeville Municipal","Beeville","TX","USA",28.36455528,-97.79208194 "3R1","Bay City Municipal","Bay City","TX","USA",28.973255,-95.86345528 "3R2","Le Gros Memorial","Crowley","LA","USA",30.16173611,-92.48396111 "3R4","Hart","Many","LA","USA",31.54489667,-93.48645306 "3R7","Jennings","Jennings","LA","USA",30.24269333,-92.67344778 "3S4","Illinois Valley","Illinois Valley (Cave Junction)","OR","USA",42.10372417,-123.6822911 "3S8","Grants Pass","Grants Pass","OR","USA",42.51011722,-123.3879894 "3S9","Condon State-Pauling ","Condon","OR","USA",45.24651889,-120.1664233 "3SG","Harry W Browne","Saginaw - H.Browne","MI","USA",43.43341028,-83.86245833 "3SQ","St Charles","St Charles","MO","USA",38.84866139,-90.50011833 "3T3","Boyceville Municipal ","Boyceville","WI","USA",45.042185,-92.0293475 "3T5","Fayette Regional Air Center","La Grange","TX","USA",29.90930556,-96.9505 "3TR","Jerry Tyler Memorial","Niles","MI","USA",41.83590806,-86.22517611 "3U3","Bowman ","Anaconda","MT","USA",46.15313278,-112.86784 "3U7","Benchmark","Benchmark","MT","USA",47.48133194,-112.8697678 "3U8","Big Sandy","Big Sandy","MT","USA",48.16247972,-110.1132631 "3V4","Fort Morgan Municipal","Fort Morgan","CO","USA",40.33423194,-103.8039508 "3WO","Shawano Municipal","Shawano","WI","USA",44.78777778,-88.56152444 "3Y2","George L Scott Municipal","West Union","IA","USA",42.98508917,-91.79060417 "3Y3","Winterset Madison County","Winterset","IA","USA",41.36276778,-94.02106194 "3Z9","Haines SPB","Haines","AK","USA",59.23495111,-135.4407181 "40J","Perry-Foley","Perry","FL","USA",30.06927778,-83.58058333 "40N","Chester Cty-G O Carlson","Coatesville","PA","USA",39.97897222,-75.86547222 "40U","Manila","Manila","UT","USA",40.98607,-109.6784811 "41U","Manti-Ephraim","Manti","UT","USA",39.32912833,-111.6146397 "42A","Melbourne Municipal","Melbourne","AR","USA",36.07079222,-91.82914667 "42C","White Cloud","White Cloud","MI","USA",43.55974139,-85.77421944 "42J","Keystone Airpark","Keystone Heights","FL","USA",29.84475,-82.04752778 "42S","Poplar","Poplar","MT","USA",48.11595861,-105.1821928 "43A","Montgomery County","Star","NC","USA",35.38819528,-79.79281667 "44B","Dover/Foxcroft","Dover-Foxcroft","ME","USA",45.18338806,-69.2328225 "44N","Sky Acres","Millbrook","NY","USA",41.70742861,-73.73802889 "45J","Rockingham-Hamlet","Rockingham","NC","USA",34.89107083,-79.75905806 "45OH","North Bass Island","North Bass Island","OH","USA",41.71932528,-82.82196917 "45R","Kountz - Hawthorne ","Kountze/Silsbee","TX","USA",30.33633806,-94.25754361 "46A","Blairsville","Blairsville","GA","USA",34.85508722,-83.996855 "46D","Carrington Municipal","Carrington","ND","USA",47.45111111,-99.15111111 "46N","Sky Park","Red Hook","NY","USA",41.98458333,-73.83596556 "47A","Cherokee County","Canton","GA","USA",34.31058333,-84.42391667 "47J","Cheraw Municipal","Cheraw","SC","USA",34.71258333,-79.95794444 "47N","Central Jersey Regional","Manville","NJ","USA",40.52438417,-74.59839194 "47V","Curtis Municipal","Curtis","NE","USA",40.63750778,-100.4712539 "48A","Cochran","Cochran","GA","USA",32.39936111,-83.27591667 "48D","Clare Municipal","Clare","MI","USA",43.83111111,-84.74133333 "48I","Braxton County","Sutton","WV","USA",38.68704444,-80.65176083 "48K","Ness City Municipal","Ness City","KS","USA",38.47110278,-99.90806667 "48S","Harlem","Harlem","MT","USA",48.56666472,-108.7729339 "48V","Tri-County","Erie","CO","USA",40.010225,-105.047975 "49A","Gilmer County","Ellijay","GA","USA",34.62786417,-84.52492889 "49T","Downtown Heliport","Dallas","TX","USA",32.77333333,-96.80027778 "49X","Chemehuevi Valley","Chemehuevi Valley","CA","USA",34.52751083,-114.4310697 "49Y","Fillmore County","Preston","MN","USA",43.67676,-92.17973444 "4A2","Atmautluak","Atmautluak","AK","USA",60.86674556,-162.2731389 "4A4","Cornelius-Moore ","Cedartown","GA","USA",34.01869444,-85.14647222 "4A5","Marshall-Searcy County","Marshall","AR","USA",35.89893667,-92.65588611 "4A6","Scottsboro Municipal","Scottsboro","AL","USA",34.68897278,-86.0058125 "4A7","Clayton County","Hampton","GA","USA",33.38911111,-84.33236111 "4A9","Isbell ","Fort Payne","AL","USA",34.4728925,-85.72221722 "4B0","South Albany","South Bethlehem","NY","USA",42.56072611,-73.83395639 "4B1","Duanesburg","Duanesburg","NY","USA",42.75840889,-74.13290472 "4B6","Ticonderoga Muni","Ticonderoga","NY","USA",43.87700278,-73.41317639 "4B7","Schroon Lake","Schroon Lake","NY","USA",43.86256083,-73.74262972 "4B8","Robertson ","Plainville","CT","USA",41.69037667,-72.8648225 "4B9","Simsbury Tri-Town","Simsbury","CT","USA",41.91676389,-72.77731778 "4C8","Albia Municipal","Albia","IA","USA",40.99445361,-92.76297194 "4D0","Abrams Municipal","Grandledge","MI","USA",42.77420167,-84.73309806 "4D9","Alma Municipal","Alma","NE","USA",40.11389972,-99.34565306 "4F2","Panola County-Sharpe ","Carthage","TX","USA",32.17608333,-94.29880556 "4F4","Gilmer-Upshur County","Gilmer","TX","USA",32.699,-94.94886111 "4G1","Greenville Muni","Greenville","PA","USA",41.44683167,-80.39126167 "4G2","Hamburg Inc.","Hamburg","NY","USA",42.7008925,-78.91475694 "4G5","Monroe County","Woodsfield","OH","USA",39.77904472,-81.10277222 "4G6","Hornell Muni","Hornell","NY","USA",42.38214444,-77.6821125 "4G7","Fairmont Muni","Fairmont","WV","USA",39.44816667,-80.16702778 "4I0","Mingo County","Williamson","WV","USA",37.68760139,-82.26097306 "4I3","Knox County","Mount Vernon","OH","USA",40.32872222,-82.52377778 "4I7","Putnam County","Greencastle","IN","USA",39.63359556,-86.8138325 "4I9","Morrow County","Mt. Gilead","OH","USA",40.52452778,-82.85005556 "4J1","Brantley County","Nahunta","GA","USA",31.21272417,-81.90539083 "4J2","Berrien County","Nashville","GA","USA",31.21255556,-83.22627778 "4J5","Quitman-Brooks County","Quitman","GA","USA",30.80575139,-83.58654889 "4J6","St Marys","St Marys","GA","USA",30.75468028,-81.55731917 "4K0","Pedro Bay","Pedro Bay","AK","USA",59.78960972,-154.1238331 "4K5","Ouzinkie","Ouzinkie","AK","USA",57.92287611,-152.5005111 "4K6","Bloomfield Municipal","Bloomfield","IA","USA",40.73210556,-92.42826889 "4KA","Tununak","Tununak","AK","USA",60.57559667,-165.2731272 "4M1","Carroll County","Berryville","AR","USA",36.38340333,-93.61685667 "4M3","Carlisle Municipal","Carlisle","AR","USA",34.80823,-91.71205083 "4M4","Clinton Municipal","Clinton","AR","USA",35.59785528,-92.45182472 "4M7","Russellville-Logan County","Russellville","KY","USA",36.79991667,-86.81016667 "4M8","Clarendon Municipal","Clarendon","AR","USA",34.64870694,-91.39457111 "4M9","Corning Municipal","Corning","AR","USA",36.40423139,-90.64792639 "4N1","Greenwood Lake","West Milford","NJ","USA",41.12854806,-74.34584611 "4O3","Blackwell-Tonkawa Municipal","Blackwell-Tonkawa","OK","USA",36.74511583,-97.34959972 "4O4","McCurtain County Regional","Idabel","OK","USA",33.909325,-94.85835278 "4O5","Cherokee Municipal","Cherokee","OK","USA",36.78336306,-98.35035083 "4PH","Polacca","Polacca","AZ","USA",35.79167222,-110.4234653 "4R1","I H Bass Jr Memorial","Lumberton","MS","USA",31.01546028,-89.48256556 "4R3","Jackson Municipal","Jackson","AL","USA",31.47210861,-87.89472083 "4R4","Fairhope Municipal","Fairhope","AL","USA",30.4621125,-87.87801972 "4R5","Madeline Island","La Pointe","WI","USA",46.78865556,-90.75866944 "4R7","Eunice","Eunice","LA","USA",30.46628389,-92.42379917 "4R9","Dauphin Island","Dauphin Island","AL","USA",30.26048083,-88.12749972 "4S1","Gold Beach Muni","Gold Beach","OR","USA",42.41344444,-124.4242742 "4S2","Hood River","Hood River","OR","USA",45.67261833,-121.5364625 "4S3","Joseph State","Joseph","OR","USA",45.35709583,-117.2532244 "4S9","Portland-Mulino","Mulino (Portland)","OR","USA",45.21632417,-122.5900839 "4SD","Reno/Stead","Reno","NV","USA",39.66738111,-119.8754169 "4T6","Mid-Way","Midlothian-Waxahachie","TX","USA",32.45609722,-96.91240972 "4U3","Liberty County","Chester","MT","USA",48.51072222,-110.9908639 "4U6","Circle Town County","Circle","MT","USA",47.41861972,-105.5619431 "4V0","Rangely","Rangely","CO","USA",40.09469917,-108.7612172 "4V1","Johnson ","Walsenburg","CO","USA",37.69640056,-104.7838747 "4V9","Antelope County","Neligh","NE","USA",42.11222889,-98.0386775 "4W1","Elizabethtown Municipal","Elizabethtown","NC","USA",34.60183722,-78.57973306 "4Z4","Holy Cross","Holy Cross","AK","USA",62.18829583,-159.7749503 "4Z7","Hyder SPB","Hyder","AK","USA",55.90331972,-130.0067031 "50I","Kentland Municipal","Kentland","IN","USA",40.75873222,-87.42821917 "50J","Berkeley County","Moncks Corner","SC","USA",33.18605556,-80.03563889 "50K","Pawnee City Municipal","Pawnee City","NE","USA",40.11611111,-96.19445278 "50R","Lockhart Municipal","Lockhart","TX","USA",29.85033333,-97.67241667 "51D","Edgeley Municipal ","Edgeley","ND","USA",46.34858333,-98.73555556 "51Z","Minto (New)","Minto","AK","USA",65.14370889,-149.3699647 "52A","Madison Municipal","Madison","GA","USA",33.61212528,-83.46044333 "52E","Timberon ","Timberon","NM","USA",32.63388889,-105.6863889 "52J","Lee County","Bishopville","SC","USA",34.24459889,-80.23729333 "53A","Dr. C.P. Savage, Sr.","Montezuma","GA","USA",32.302,-84.00747222 "53K","Osage City Municipal","Osage City","KS","USA",38.63334222,-95.80859806 "54J","Defuniak Springs","Defuniak Springs","FL","USA",30.7313,-86.15160833 "55D","Grayling Army Airfield","Grayling","MI","USA",44.68032028,-84.72886278 "55J","Fernandina Beach Municipal","Fernandina Beach","FL","USA",30.61170083,-81.462345 "55S","Packwood","Packwood","WA","USA",46.60400083,-121.6778664 "56D","Wyandot County","Upper Sandusky","OH","USA",40.88336139,-83.3145325 "56M","Warsaw Municipal","Warsaw","MO","USA",38.34688889,-93.345425 "56S","Seaside Municipal","Seaside","OR","USA",46.01649694,-123.9054167 "57B","Islesboro","Islesboro","ME","USA",44.30285556,-68.91058722 "57C","East Troy Municipal","East Troy","WI","USA",42.79711111,-88.3725 "59B","Newton ","Jackman","ME","USA",45.63199111,-70.24728944 "5A4","Okolona Mun.-Richard M. Stovall ","Okolona","MS","USA",34.01580528,-88.72618944 GGally/tests/testthat/test-ggmatrix_getput.R0000644000176200001440000000235415047655266020771 0ustar liggesusersdata(tips) test_that("stops", { pm <- ggpairs(tips) p <- ggally_blankDiag() expect_error(pm["total_bill", 1], "`i` may only be a single") expect_error(pm[1, "total_bill"], "`j` may only be a single") expect_error(pm["total_bill", 1] <- p, "`i` may only be a single") expect_error(pm[1, "total_bill"] <- p, "`j` may only be a single") pm <- ggduo(tips, 1:3, 1:4) expect_error(pm[0, 1], "`i` may only be in the range") expect_error(pm[1, 0], "`j` may only be in the range") expect_error(pm[5, 1], "`i` may only be in the range") expect_error(pm[1, 4], "`j` may only be in the range") for (i in 1:4) { for (j in 1:3) { expect_silent({ p <- pm[i, j] }) } } }) test_that("get", { a <- ggpairs( tips, 1:4, axisLabels = "show" ) p <- a[2, 1] labs <- get_labs(p) expect_equal(labs$x, "total_bill") expect_equal(labs$y, "tip") # test odd input and retrieve it a[2, 1] <- 1:4 expect_error( { a[2, 1] }, "unknown plot object type" ) }) test_that("put", { a <- ggpairs( tips, 1:4, axisLabels = "show" ) txt <- "My Custom Plot" a[2, 1] <- ggally_text(txt) p <- a[2, 1] expect_equal(get("aes_params", envir = p$layers[[1]])$label, txt) }) GGally/tests/testthat/test-deprecated.R0000644000176200001440000000134315027521001017625 0ustar liggesusersdata(tips) test_that("ggally_cor_v1_5() works", { lifecycle::expect_deprecated( { p <- ggally_cor_v1_5( tips, ggplot2::aes(!!as.name("total_bill"), !!as.name("tip")) ) } ) }) test_that("v1_ggmatrix_theme() is deprecated", { skip_if(packageVersion("ggplot2") < "3.5.2.9001") old_opts <- options(lifecycle_verbosity = "quiet") on.exit(options(old_opts), add = TRUE) expect_snapshot( v1_ggmatrix_theme() ) }) test_that("ggally_cor_v1_5() is deprecated", { old_opts <- options(lifecycle_verbosity = "quiet") on.exit(options(old_opts), add = TRUE) expect_snapshot( p <- ggally_cor_v1_5( tips, ggplot2::aes(!!as.name("total_bill"), !!as.name("tip")) ) ) }) GGally/tests/testthat/test-ggscatmat.R0000644000176200001440000000212615027521001017477 0ustar liggesusersdata(flea) test_that("example", { flea2 <- flea flea2$species2 <- as.character(flea2$species) expect_warning( p <- ggscatmat(flea2, c(1:3)), "Factor variables are omitted in plot" ) expect_warning( p <- ggscatmat(flea2, c(2:3, 8)), "Factor variables are omitted in plot" ) expect_true(is.null(get_labs(p)$colour)) ggally_expect_doppelganger("flea", p) p <- ggscatmat(flea, columns = 2:4, color = "species") expect_true(!is.null(get_labs(p)$colour)) ggally_expect_doppelganger("flea-color", p) }) test_that("corMethod", { p <- ggscatmat(flea, columns = 2:3, corMethod = "pearson") ggally_expect_doppelganger("flea-pearson", p) p <- ggscatmat(flea, columns = 2:3, corMethod = "rsquare") ggally_expect_doppelganger("flea-rsquare", p) }) test_that("stops", { expect_error( ggscatmat(flea, columns = c(1, 2)), "Not enough numeric variables to" ) expect_error( ggscatmat(flea, columns = c(1, 1, 1)), "All of your variables are factors" ) expect_error( scatmat(flea, columns = c(1, 1, 1)), "All of your variables are factors" ) }) GGally/tests/testthat/test-ggsave.R0000644000176200001440000000041715023051677017017 0ustar liggesuserstest_that("ggsave", { pm <- ggpairs(iris, 1:2) test_file <- "test.pdf" on.exit({ unlink(test_file) }) expect_true(!file.exists(test_file)) expect_silent({ ggsave(test_file, pm, width = 7, height = 7) }) expect_true(file.exists(test_file)) }) GGally/tests/testthat/test-zzz_ggpairs.R0000644000176200001440000005666615047655266020147 0ustar liggesusers# This file takes too long testthat::skip_on_cran() data(tips) facethistBindwidth1 <- list(combo = wrap("facethist", binwidth = 1)) facethistBindwidth1Duo <- list( comboHorizontal = wrap("facethist", binwidth = 1), comboVertical = wrap("facethist", binwidth = 1) ) test_that("structure", { expect_null <- function(x) { expect_true(is.null(x)) } expect_obj <- function(x) { expect_s3_class(x$data, "data.frame") expect_type(x$plots, "list") expect_equal(length(x$plots), ncol(tips)^2) expect_null(x$title) expect_null(x$xlab) expect_null(x$ylab) expect_type(x$xAxisLabels, "character") expect_type(x$yAxisLabels, "character") expect_type(x$showXAxisPlotLabels, "logical") expect_type(x$showYAxisPlotLabels, "logical") expect_null(x$legend) expect_type(x$byrow, "logical") expect_null(x$gg) } expect_obj(ggduo(tips)) expect_obj(ggpairs(tips)) }) test_that("columns", { expect_obj <- function(pm, columnsX, columnsY) { expect_equal(length(pm$plots), length(columnsX) * length(columnsY)) expect_equal(pm$xAxisLabels, columnsX) expect_equal(pm$yAxisLabels, columnsY) expect_equal(pm$ncol, length(columnsX)) expect_equal(pm$nrow, length(columnsY)) } columnsUsed <- c("total_bill", "tip", "sex") pm <- ggpairs(tips, columns = columnsUsed) expect_obj(pm, columnsUsed, columnsUsed) columnsX <- c("total_bill", "tip", "sex") columnsY <- c("smoker", "day", "time", "size") pm <- ggduo(tips, columnsX, columnsY) expect_obj(pm, columnsX, columnsY) }) test_that("column labels", { expect_obj <- function(pm, columnLabelsX, columnLabelsY) { expect_equal(pm$xAxisLabels, columnLabelsX) expect_equal(pm$yAxisLabels, columnLabelsY) } columnTitles <- c("A", "B", "C") pm <- ggpairs(tips, 1:3, columnLabels = columnTitles) expect_obj(pm, columnTitles, columnTitles) columnTitles <- c("Total Bill %", "Tip 123456", "Sex ( /a asdf)") pm <- ggpairs(tips, 1:3, columnLabels = columnTitles) expect_obj(pm, columnTitles, columnTitles) columnLabelsX <- c("Total Bill %", "Tip 123456", "Sex ( /a asdf)") columnLabelsY <- c("Smoker !#@", "Day 678", "1", "NULL") pm <- ggduo( tips, 1:3, 4:7, columnLabelsX = columnLabelsX, columnLabelsY = columnLabelsY ) expect_obj(pm, columnLabelsX, columnLabelsY) }) test_that("character", { expect_obj <- function(pm) { expect_true(is.factor(pm$data$sex)) expect_true(is.factor(pm$data$smoker)) } tips2 <- tips tips2$sex <- as.character(tips2$sex) tips2$smoker <- as.character(tips2$smoker) expect_obj(ggpairs(tips2)) expect_obj(ggduo(tips2)) }) test_that("upper/lower/diag = blank", { columnsUsed <- 1:3 au <- ggpairs(tips, columnsUsed, upper = "blank") ad <- ggpairs(tips, columnsUsed, diag = "blank") al <- ggpairs(tips, columnsUsed, lower = "blank") for (i in 1:3) { for (j in 1:3) { if (i < j) { expect_true(is_blank_plot(au[i, j])) expect_false(is_blank_plot(ad[i, j])) expect_false(is_blank_plot(al[i, j])) } if (i > j) { expect_false(is_blank_plot(au[i, j])) expect_false(is_blank_plot(ad[i, j])) expect_true(is_blank_plot(al[i, j])) } if (i == j) { expect_false(is_blank_plot(au[i, j])) expect_true(is_blank_plot(ad[i, j])) expect_false(is_blank_plot(al[i, j])) } } } a <- ggpairs(tips, columnsUsed) a[1, 1] <- ggplot(tips, aes(total_bill)) + geom_histogram() expect_false(is_blank_plot(a[1, 1])) }) test_that("stops", { expect_warning( { pm <- ggpairs( tips, axisLabels = "not_a_chosen", lower = facethistBindwidth1 ) }, "`axisLabels` not in " ) expect_warning( { pm <- ggduo( tips, axisLabels = "not_a_chosen", types = facethistBindwidth1Duo ) }, "`axisLabels` not in " ) lifecycle::expect_deprecated( { pm <- ggpairs(tips, color = "sex") }, ) expect_warning( { pm <- ggduo(tips, 2:3, 2:3, types = list(combo = "facetdensity")) }, "Setting:\n" ) expect_error( { ggpairs(tips, columns = c("tip", "day", "not in tips")) }, "Columns in `columns` not found in data" ) expect_error( { ggduo( tips, columnsX = c("tip", "day", "not in tips"), columnsY = "smoker" ) }, "Columns in `columnsX` not found in data" ) expect_error( { ggduo( tips, columnsX = c("tip", "day", "smoker"), columnsY = "not in tips" ) }, "Columns in `columnsY` not found in data" ) lifecycle::expect_deprecated( { pm <- ggpairs(tips, legends = TRUE) } ) lifecycle::expect_deprecated( { ggpairs(tips, params = c(size = 2)) } ) expect_error( { ggpairs(tips, columns = 1:10) }, "Make sure your numeric " ) expect_error( { ggduo(tips, columnsX = 1:10) }, "Make sure your numeric " ) expect_error( { ggduo(tips, columnsY = 1:10) }, "Make sure your numeric " ) expect_error( { ggpairs(tips, columns = -5:5) }, "Make sure your numeric " ) expect_error( { ggduo(tips, columnsX = -5:5) }, "Make sure your numeric " ) expect_error( { ggduo(tips, columnsY = -5:5) }, "Make sure your numeric " ) expect_error( { ggpairs(tips, columns = (2:10) / 2) }, "Make sure your numeric " ) expect_error( { ggduo(tips, columnsX = (2:10) / 2) }, "Make sure your numeric " ) expect_error( { ggduo(tips, columnsY = (2:10) / 2) }, "Make sure your numeric " ) expect_error( { ggpairs(tips, columns = 1:3, columnLabels = c("A", "B", "C", "Extra")) }, "The length of the `columnLabels` does not match the length of the" ) expect_error( { ggduo(tips, columnsX = 1:3, columnLabelsX = c("A", "B", "C", "Extra")) }, "The length of the `columnLabelsX` does not match the length of the" ) expect_error( { ggduo(tips, columnsY = 1:3, columnLabelsY = c("A", "B", "C", "Extra")) }, "The length of the `columnLabelsY` does not match the length of the" ) expect_error( { ggpairs(tips, upper = c("not_a_list")) }, "`upper` is not a list" ) expect_error( { ggpairs(tips, diag = c("not_a_list")) }, "`diag` is not a list" ) expect_error( { ggpairs(tips, lower = c("not_a_list")) }, "`lower` is not a list" ) expect_error( { ggduo(tips, types = c("not_a_list")) }, "`types` is not a list" ) # # couldn't get correct error message # # variables: 'colour' have non standard format: 'total_bill + tip'. # expect_error({ # ggpairs(tips, mapping = ggplot2::aes(color = total_bill + tip)) # }, "variables\\: \"colour\" have non standard format") # expect_error({ # ggduo(tips, mapping = ggplot2::aes(color = total_bill + tip)) # }, "variables\\: \"colour\" have non standard format") errorString <- "`aes_string\\(\\)` is a deprecated element" expect_error( { ggpairs(tips, upper = list(aes_string = ggplot2::aes(color = .data$day))) }, errorString ) expect_error( { ggpairs(tips, lower = list(aes_string = ggplot2::aes(color = .data$day))) }, errorString ) expect_error( { ggpairs(tips, diag = list(aes_string = ggplot2::aes(color = .data$day))) }, errorString ) expect_error( { ggduo(tips, types = list(aes_string = ggplot2::aes(color = .data$day))) }, errorString ) expect_diag_warn <- function(key, value) { warnString <- sprintf("Changing `diag\\$%s` from", key) diagObj <- list() diagObj[[key]] <- value expect_warning( { pm <- ggpairs(tips, diag = diagObj) }, warnString ) } # diag # continuous # densityDiag # barDiag # blankDiag # discrete # barDiag # blankDiag expect_diag_warn("continuous", "density") expect_diag_warn("continuous", "bar") expect_diag_warn("continuous", "blank") expect_diag_warn("discrete", "bar") expect_diag_warn("discrete", "blank") }) test_that("cardinality", { expect_silent(stop_if_high_cardinality(tips, 1:ncol(tips), NULL)) expect_silent(stop_if_high_cardinality(tips, 1:ncol(tips), FALSE)) expect_error( stop_if_high_cardinality(tips, 1:ncol(tips), "not numeric"), "`cardinality_threshold` should" ) expect_error( stop_if_high_cardinality(tips, 1:ncol(tips), 2), "Column" ) }) test_that("blank types", { columnsUsed <- 1:3 pmUpper <- ggpairs( tips, columnsUsed, upper = "blank", lower = facethistBindwidth1 ) pmDiag <- ggpairs( tips, columnsUsed, diag = "blank", lower = facethistBindwidth1 ) pmLower <- ggpairs(tips, columnsUsed, lower = "blank") for (i in columnsUsed) { for (j in columnsUsed) { if (i < j) { # upper expect_true(is_blank_plot(pmUpper[i, j])) expect_false(is_blank_plot(pmDiag[i, j])) expect_false(is_blank_plot(pmLower[i, j])) } else if (i > j) { # lower expect_false(is_blank_plot(pmUpper[i, j])) expect_false(is_blank_plot(pmDiag[i, j])) expect_true(is_blank_plot(pmLower[i, j])) } else { # diag expect_false(is_blank_plot(pmUpper[i, j])) expect_true(is_blank_plot(pmDiag[i, j])) expect_false(is_blank_plot(pmLower[i, j])) } } } columnsUsedX <- 1:3 columnsUsedY <- 4:5 pmDuo <- ggduo(tips, columnsUsedX, columnsUsedY, types = "blank") for (i in seq_along(columnsUsedX)) { for (j in seq_along(columnsUsedY)) { expect_true(is_blank_plot(pmDuo[j, i])) } } }) test_that("axisLabels", { expect_axis_labels <- function(pm, prefix, axisLabel) { expect_true(is.null(pm$showStrips)) if (axisLabel == "show") { expect_true(pm$showXAxisPlotLabels) expect_true(pm$showYAxisPlotLabels) expect_false(is.null(pm$xAxisLabels)) expect_false(is.null(pm$yAxisLabels)) } else if (axisLabel == "internal") { for (i in 1:(pm$ncol)) { p <- pm[i, i] expect_true(inherits(p$layers[[1]]$geom, "GeomText")) expect_true(inherits(p$layers[[2]]$geom, "GeomText")) expect_equal(length(p$layers), 2) } expect_false(pm$showXAxisPlotLabels) expect_false(pm$showYAxisPlotLabels) expect_true(is.null(pm$xAxisLabels)) expect_true(is.null(pm$yAxisLabels)) } else if (axisLabel == "none") { expect_false(pm$showXAxisPlotLabels) expect_false(pm$showYAxisPlotLabels) expect_false(is.null(pm$xAxisLabels)) expect_false(is.null(pm$yAxisLabels)) } ggally_expect_doppelganger( paste0("axisLabels-", prefix, "-", axisLabel), pm ) } fn <- function(axisLabels) { pm <- ggpairs( iris, c(3, 4, 5, 1), upper = "blank", lower = facethistBindwidth1, axisLabels = axisLabels, title = str_c("axisLabels = ", axisLabels), progress = FALSE ) pm } for (axisLabels in c("show", "internal", "none")) { expect_axis_labels(fn(axisLabels), "ggpairs", axisLabels) } plots <- ggpairs(iris, 1:3)$plots for (val in c(TRUE, FALSE)) { pm <- ggmatrix( plots, 3, 3, showAxisPlotLabels = val ) expect_equal(pm$showXAxisPlotLabels, val) expect_equal(pm$showYAxisPlotLabels, val) } fn <- function(axisLabels) { a <- ggduo( iris, c(4, 5), c(5, 1), types = facethistBindwidth1Duo, axisLabels = axisLabels, title = str_c("axisLabels = ", axisLabels) ) a } for (axisLabels in c("show", "none")) { expect_axis_labels(fn(axisLabels), "ggduo", axisLabels) } }) test_that("strips and axis", { # axis should line up with left side strips pm <- ggpairs( tips, c(3, 1, 4), showStrips = TRUE, title = "Axis should line up even if strips are present", lower = list(combo = wrap("facethist", binwidth = 1)) ) ggally_expect_doppelganger("show-strips", pm) # default behavior. tested in other places # expect_silent({ # pm <- ggpairs(tips, c(3, 1, 4), showStrips = FALSE) # print(pm) # }) }) test_that("dates", { startDt <- as.POSIXct("2000-01-01", tz = "UTC") endDt <- as.POSIXct("2000-04-01", tz = "UTC") dts <- seq(startDt, endDt, 86400) # 86400 = as.numeric(ddays(1)) x <- data.frame( date = dts, x1 = rnorm(length(dts)), x2 = rnorm(length(dts)), cat = sample(c("a", "b", "c"), length(dts), replace = TRUE) ) class(x) <- c("NOT_data.frame", "data.frame") a <- ggpairs( x, c(2, 1, 4, 3), mapping = ggplot2::aes(color = cat), lower = "blank", diag = list(continuous = "densityDiag"), upper = list(continuous = "cor") ) p <- a[1, 2] expect_true(inherits(p$layers[[1]]$geom, "GeomText")) expect_true(inherits(p$layers[[2]]$geom, "GeomText")) expect_equal(length(p$layers), 2) a <- ggpairs( x, c(2, 1, 4, 3), mapping = ggplot2::aes(color = cat), lower = "blank", diag = list(continuous = "barDiag"), upper = list(continuous = "cor") ) p <- a[1, 1] expect_true(inherits(p$layers[[1]]$geom, "GeomBar")) expect_equal(length(p$layers), 1) }) test_that("mapping", { pm <- ggpairs(tips, mapping = 1:3) expect_equal(pm$xAxisLabels, names(tips)[1:3]) pm <- ggpairs(tips, columns = 1:3) expect_equal(pm$xAxisLabels, names(tips)[1:3]) expect_error( { ggpairs(tips, columns = 1:3, mapping = 1:3) }, "`mapping` should not be numeric" ) }) test_that("user functions", { p0 <- ggally_points(tips, ggplot2::aes(x = total_bill, y = tip)) pm1 <- ggpairs(tips, 1:2, lower = list(continuous = "points")) p1 <- pm1[2, 1] pm2 <- ggpairs(tips, 1:2, lower = list(continuous = ggally_points)) p2 <- pm2[2, 1] expect_equal_plots <- function(x, y) { expect_equal(length(x$layers), 1) expect_equal(length(y$layers), 1) expect_true( "GeomPoint" %in% class(x$layers[[1]]$geom) ) expect_true( "GeomPoint" %in% class(y$layers[[1]]$geom) ) if (packageVersion("ggplot2") > "3.5.2") { x_built <- ggplot2::ggplot_build(x) y_built <- ggplot2::ggplot_build(y) expect_equal( x_built@plot@labels[c("x", "y")], list(x = "total_bill", y = "tip") ) expect_equal(x_built@plot@labels, y_built@plot@labels) } else { expect_equal(x$labels, list(x = "total_bill", y = "tip")) expect_equal(x$labels, y$labels) } } expect_equal_plots(p0, p1) expect_equal_plots(p0, p2) }) test_that("NA data", { expect_is_na_plot <- function(p) { expect_true(identical(as.character(p$data$label), "NA")) expect_true(inherits(p$layers[[1]]$geom, "GeomText")) expect_equal(length(p$layers), 1) } expect_not_na_plot <- function(p) { expect_false(identical(as.character(p$data$label), "NA")) } expect_is_blank <- function(p) { expect_true(is_blank_plot(p)) } dd <- data.frame( x = c(1:5, rep(NA, 5)), y = c(rep(NA, 5), 2:6), z = 1:10, w = NA ) pm <- ggpairs(dd) test_pm <- function(pm, na_mat) { for (i in 1:4) { for (j in 1:4) { if (na_mat[i, j]) { expect_is_na_plot(pm[i, j]) } else { if (j == 3 && i < 3) { expect_warning( { p <- pm[i, j] }, "Removed 5 rows" ) } else { p <- pm[i, j] } expect_not_na_plot(p) } } } } na_mat <- matrix(FALSE, ncol = 4, nrow = 4) na_mat[1, 2] <- TRUE na_mat[2, 1] <- TRUE na_mat[1:4, 4] <- TRUE na_mat[4, 1:4] <- TRUE test_pm(pm, na_mat) }) test_that("strip-top and strip-right", { data(tips) double_strips <- function(data, mapping, ...) { dt <- dplyr::count( data, .data[[mapping_string(mapping$x)]], .data[[mapping_string(mapping$y)]], name = "freq" ) ggplot(dt, aes(xmin = 0.25, xmax = 0.75, ymin = 1, ymax = freq)) + geom_rect() + ggplot2::facet_grid(paste0( mapping_string(mapping$y), " ~ ", mapping_string(mapping$x) )) + ggplot2::scale_x_continuous(breaks = 0.5, labels = NULL) } pm <- ggpairs( tips, 3:6, lower = "blank", diag = "blank", upper = list(discrete = double_strips), progress = FALSE ) ggally_expect_doppelganger("nested-strips-default", pm) pm <- ggpairs( tips, 3:6, lower = "blank", diag = "blank", upper = list(discrete = double_strips), showStrips = TRUE, progress = FALSE ) ggally_expect_doppelganger("nested-strips-true", pm) }) return() testthat::skip_on_cran() testthat::skip_if_not_installed("Hmisc") # list of the different plot types to check # continuous # points # smooth # smooth_loess # density # cor # blank # combo # box # dot plot # facethist # facetdensity # denstrip # blank # discrete # ratio # facetbar # blank gn <- function(x) { fnName <- attr(x, "name") fnName %||% x } ggpairs_fn1 <- function(title, types, diag, ...) { ggpairs( tips, 1:4, axisLabels = "show", title = paste( "upper = c(cont = ", gn(types$continuous), ", combo = ", gn(types$combo), ", discrete = ", gn(types$discrete), "); diag = c(cont = ", gn(diag$continuous), ", discrete = ", gn(diag$discrete), ")", sep = "" ), upper = types, lower = types, diag = diag, progress = FALSE, ... ) + ggplot2::theme(plot.title = ggplot2::element_text(size = 9)) } ggpairs_fn2 <- function(...) { ggpairs_fn1( ..., mapping = ggplot2::aes(color = !!as.name("day")), legend = c(1, 3) ) } ggduo_fn1 <- function(title, types, diag, ...) { types$comboHorizontal <- types$combo types$comboVertical <- types$combo types$combo <- NULL ggduo( tips, 1:3, 1:4, axisLabels = "show", title = paste( "types = c(cont = ", gn(types$continuous), ", combo = ", gn(types$comboHorizontal), ", discrete = ", gn(types$discrete), ")", sep = "" ), types = types, progress = FALSE, ... ) + ggplot2::theme(plot.title = ggplot2::element_text(size = 9)) } ggduo_fn2 <- function(...) { ggduo_fn1(..., mapping = ggplot2::aes(color = .data$day), legend = 3) + theme(legend.position = "bottom") } # re ordered the subs so that density can have no binwidth param conSubs <- list( "autopoint", "density", "points", "smooth", "smooth_lm", "smooth_loess", "cor", "blank" ) comSubs <- list( "autopoint", "box", "dot", "box_no_facet", "dot_no_facet", wrap("facethist", binwidth = 1), "facetdensity", "facetdensitystrip", # "summarise_by", # Issues with grid printing wrap("denstrip", binwidth = 1), "blank" ) disSubs <- list( "autopoint", "colbar", "count", "cross", "crosstable", "facetbar", "ratio", "rowbar", "table", # "trends", # Issues with grid printing "blank" ) conDiagSubs <- c( "autopointDiag", "densityDiag", wrap("barDiag", binwidth = 1), "blankDiag" ) disDiagSubs <- c( "autopointDiag", "barDiag", "countDiag", "tableDiag", "blankDiag" ) # for (fn in list(ggpairs_fn1, ggpairs_fn2, ggduo_fn1, ggduo_fn2)) { for (fn_info in list( list(fn = ggpairs_fn1, title = "ggpairs"), list(fn = ggpairs_fn2, title = "ggpairs_color"), list(fn = ggduo_fn1, title = "ggduo"), list(fn = ggduo_fn2, title = "ggduo_color") )) { fn <- fn_info$fn fn_name <- fn_info$title for (i in 1:max(c( length(conSubs), length(comSubs), length(disSubs), length(conDiagSubs), length(disDiagSubs) ))) { conSub <- if (i <= length(conSubs)) conSubs[[i]] else "blank" comSub <- if (i <= length(comSubs)) comSubs[[i]] else "blank" disSub <- if (i <= length(disSubs)) disSubs[[i]] else "blank" diagConSub <- if (i <= length(conDiagSubs)) { conDiagSubs[[i]] } else { "blankDiag" } diagDisSub <- if (i <= length(disDiagSubs)) { disDiagSubs[[i]] } else { "blankDiag" } type_name <- function(x) { if (is.function(x)) { sub("ggally_", "", attr(x, "name")) } else { x } } type_names <- vapply( c(conSub, comSub, disSub, diagConSub, diagDisSub), type_name, character(1) ) if (all(grepl("blank", type_names))) { # vdiffr can't handle blank plots next } pm_name <- paste0(type_names, collapse = "-") pm_name <- paste0(fn_name, "-", pm_name) test_that(paste0("subtypes", "-", pm_name), { # print(list( # fn_num = fn_num, # types = list( # continuous = conSub, # combo = comSub, # discrete = disSub # ), # diag = list( # continuous = diagConSub, # discrete = diagDisSub # ) # )) # expect_silent({ pm <- fn( types = list( continuous = conSub, combo = comSub, discrete = disSub ), diag = list( continuous = diagConSub, discrete = diagDisSub ) ) }) tryCatch( { set.seed(123456) # keep jitter consistent suppressWarnings({ built_pm <- ggmatrix_gtable(pm) }) ggally_expect_doppelganger(pm_name, built_pm) }, error = function(e) { if (interactive()) { assign("barret", pm, envir = globalenv()) } # Rethrow error signalCondition(e) } ) }) } } test_that("bad types", { skip_on_cran() expect_error({ ggpairs( tips, 1:2, lower = "blank", diag = "blank", upper = list(continuous = "BAD_TYPE") ) }) }) # pm <- ggpairs(tips, upper = "blank") # # pm # # Custom Example # pm <- ggpairs( # tips[, c(1, 3, 4, 2)], # upper = list(continuous = "density", combo = "box"), # lower = list(continuous = "points", combo = "dot") # ) # # pm # # Use sample of the diamonds data # data(diamonds, package = "ggplot2") # diamonds.samp <- diamonds[sample(1:dim(diamonds)[1], 200), ] # # Custom Example # pm <- ggpairs( # diamonds.samp[, 1:5], # upper = list(continuous = "density", combo = "box"), # lower = list(continuous = "points", combo = "dot"), # color = "cut", # alpha = 0.4, # title = "Diamonds" # ) # # pm # # Will plot four "Incorrect Plots" # bad_plots <- ggpairs( # tips[, 1:3], # upper = list(continuous = "wrongType1", combo = "wrongType2"), # lower = list(continuous = "IDK1", combo = "IDK2", discrete = "mosaic"), # ) # # bad_plots # # Only Variable Labels on the diagonal (no axis labels) # pm <- ggpairs(tips[, 1:3], axisLabels = "internal") # # pm # # Only Variable Labels on the outside (no axis labels) # pm <- ggpairs(tips[, 1:3], axisLabels = "none") # # pm # # Custom Examples # custom_car <- ggpairs(mtcars[, c("mpg", "wt", "cyl")], upper = "blank", title = "Custom Example") # #' # ggplot example taken from example(geom_text) # #' plot <- ggplot2::ggplot(mtcars, ggplot2::aes(x = wt, y = mpg, label = rownames(mtcars))) # #' plot <- plot + # #' ggplot2::geom_text(ggplot2::aes(colour = factor(cyl)), size = 3) + # #' ggplot2::scale_colour_discrete(l = 40) # #' custom_car <- putPlot(custom_car, plot, 1, 2) # #' personal_plot <- ggally_text( # #' "ggpairs allows you\nto put in your\nown plot.\nLike that one.\n <---" # #' ) # #' custom_car <- putPlot(custom_car, personal_plot, 1, 3) # #' # custom_car GGally/tests/testthat/test-ggcoef.R0000644000176200001440000000120615027521001016755 0ustar liggesuserssuppressMessages(require(broom)) test_that("example", { reg <- lm( Sepal.Length ~ Sepal.Width + Petal.Length + Petal.Width, data = iris ) p <- ggcoef(reg) ggally_expect_doppelganger("lm", p) skip_if_not_installed("MASS") d <- as.data.frame(Titanic) reg2 <- glm( Survived ~ Sex + Age + Class, family = binomial, data = d, weights = d$Freq ) p <- ggcoef(reg2, exponentiate = TRUE) ggally_expect_doppelganger("lm-expo", p) p <- ggcoef( reg2, exponentiate = TRUE, exclude_intercept = TRUE, errorbar_height = .2, color = "blue" ) ggally_expect_doppelganger("lm-expo-blue", p) }) GGally/tests/testthat/test-ggnet2.R0000644000176200001440000002140715047655266016745 0ustar liggesusersif ("package:igraph" %in% search()) { detach("package:igraph") } skip_if_not(rq(network)) # network objects skip_if_not(rq(sna)) # placement and centrality skip_if_not(rq(ggplot2)) # grammar of graphics skip_if_not(rq(grid)) # arrows skip_if_not(rq(scales)) # sizing skip_if_not(rq(intergraph)) # test igraph conversion skip_if_not(rq(RColorBrewer)) # test ColorBrewer palettes test_that("examples", { skip_if_not_installed("network") ### --- start: documented examples set.seed(54321) # random adjacency matrix x <- 10 ndyads <- x * (x - 1) density <- x / ndyads m <- matrix(0, nrow = x, ncol = x) dimnames(m) <- list(letters[1:x], letters[1:x]) m[row(m) != col(m)] <- runif(ndyads) < density m # random undirected network n <- network::network(m, directed = FALSE) n ggnet2(n, label = TRUE) # ggnet2(n, label = TRUE, shape = 15) # ggnet2(n, label = TRUE, shape = 15, color = "black", label.color = "white") # add vertex attribute x <- network.vertex.names(n) x <- ifelse(x %in% c("a", "e", "i"), "vowel", "consonant") n %v% "phono" <- x ggnet2(n, color = "phono") ggnet2( n, color = "phono", palette = c("vowel" = "gold", "consonant" = "grey") ) ggnet2(n, shape = "phono", color = "phono") # random groups n %v% "group" <- sample(LETTERS[1:3], 10, replace = TRUE) ggnet2(n, color = "group", palette = "Set2") # random weights n %e% "weight" <- sample(1:3, network.edgecount(n), replace = TRUE) ggnet2(n, edge.size = "weight", edge.label = "weight") # Padgett's Florentine wedding data data(flo, package = "network") flo ggnet2(flo, label = TRUE) ggnet2(flo, label = TRUE, label.trim = 4, vjust = -1, size = 3, color = 1) # ggnet2(flo, label = TRUE, size = 12, color = "white") ### --- end: documented examples # test node assignment errors expect_error(ggnet2(n, color = NA)) expect_error(ggnet2(n, color = -1)) expect_error(ggnet2(n, color = rep("red", network.size(n) - 1))) # test node assignment ggnet2(n, color = rep("red", network.size(n))) # test node assignment errors expect_error(ggnet2(n, edge.color = NA)) expect_error(ggnet2(n, edge.color = -1)) expect_error(ggnet2(n, edge.color = rep("red", network.edgecount(n) - 1))) # test edge assignment ggnet2(n, edge.color = rep("red", network.edgecount(n))) # ggnet2(n, edge.color = "weight") # test mode = c("x", "y") ggnet2(n, mode = matrix(1, ncol = 2, nrow = 10)) n %v% "x" <- sample(1:10) n %v% "y" <- sample(1:10) ggnet2(n, mode = c("x", "y")) expect_error(ggnet2(n, mode = c("xx", "yy")), "not found") expect_error(ggnet2(n, mode = c("phono", "phono")), "not numeric") expect_error( ggnet2(n, mode = matrix(1, ncol = 2, nrow = 9)), "coordinates length" ) # test arrow.size expect_error(ggnet2(n, arrow.size = -1), "incorrect `arrow.size`") expect_warning(ggnet2(n, arrow.size = 1), "`arrow.size` ignored") # test arrow.gap suppressWarnings(expect_error( ggnet(n, arrow.size = 12, arrow.gap = -1), "incorrect `arrow.gap`" )) suppressWarnings(expect_warning( ggnet(n, arrow.size = 12, arrow.gap = 0.1), "`arrow.gap` ignored" # network is undirected; arrow.gap ignored )) suppressWarnings(expect_warning( ggnet(n, arrow.size = 12, arrow.gap = 0.1), "`arrow.size` ignored" # network is undirected; arrow.size ignored )) m <- network::network(m, directed = TRUE) ggnet2(m, arrow.size = 12, arrow.gap = 0.05) # test max_size expect_error(ggnet2(n, max_size = NA), "incorrect `max_size`") # test na.rm expect_error(ggnet2(n, na.rm = 1:2), "incorrect `na.rm`") expect_error(ggnet2(n, na.rm = "xyz"), "not found") n %v% "missing" <- ifelse(n %v% "phono" == "vowel", NA, n %v% "phono") expect_message(ggnet2(n, na.rm = "missing"), "removed") n %v% "missing" <- NA suppressMessages({ expect_warning(ggnet2(n, na.rm = "missing"), "removed all nodes") }) # test size = "degree" ggnet2(n, size = "degree") # test size.min expect_error( ggnet2(n, size = "degree", size.min = -1), "incorrect `size.min`" ) expect_message(ggnet2(n, size = "degree", size.min = 1), "`size.min` removed") suppressMessages({ expect_warning(ggnet2(n, size = "abc", size.min = 1), "not numeric") expect_warning(ggnet2(n, size = 4, size.min = 5), "removed all nodes") }) # test size.max expect_error( ggnet2(n, size = "degree", size.max = -1), "incorrect `size.max`" ) expect_message( ggnet2(n, size = "degree", size.max = 99), "`size.max` removed" ) suppressMessages({ expect_warning(ggnet2(n, size = "abc", size.max = 1), "not numeric") expect_warning(ggnet2(n, size = 4, size.max = 3), "removed all nodes") }) # test size.cut ggnet2(n, size = 1:10, size.cut = 3) ggnet2(n, size = 1:10, size.cut = TRUE) expect_error(ggnet2(n, size = 1:10, size.cut = NA), "incorrect `size.cut`") expect_error(ggnet2(n, size = 1:10, size.cut = "xyz"), "incorrect `size.cut`") expect_warning(ggnet2(n, size = "abc", size.cut = 3), "not numeric") expect_warning(ggnet2(n, size = 1, size.cut = 3), "ignored") # test alpha.palette ggnet2(n, alpha = "phono", alpha.palette = c("vowel" = 1, "consonant" = 0.5)) ggnet2(n, alpha = factor(1:10)) expect_error( ggnet2(n, alpha = "phono", alpha.palette = c("vowel" = 1)), "no `alpha.palette` value" ) # test color.palette # ggnet2(n, color = "phono", color.palette = c("vowel" = 1, "consonant" = 2)) ggnet2(n, color = factor(1:10)) ggnet2(n, color = "phono", palette = "Set1") # only 2 groups, palette has min. 3 expect_error( ggnet2(n, color = factor(1:10), palette = "Set1"), "too many node groups" ) expect_error( ggnet2(n, color = "phono", color.palette = c("vowel" = 1)), "no `color.palette` value" ) # test shape.palette ggnet2(n, shape = "phono", shape.palette = c("vowel" = 15, "consonant" = 19)) expect_warning(ggnet2(n, shape = factor(1:10)), "discrete values") expect_error( ggnet2(n, shape = "phono", shape.palette = c("vowel" = 1)), "no `shape.palette` value" ) # test size.palette ggnet2(n, size = "phono", size.palette = c("vowel" = 1, "consonant" = 2)) ggnet2(n, size = factor(1:10)) expect_error( ggnet2(n, size = "phono", size.palette = c("vowel" = 1)), "no `size.palette` value" ) # test node.label ggnet2(n, label = sample(letters, 10)) ggnet2(n, label = "phono") # test label.alpha expect_error( ggnet2(n, label = TRUE, label.alpha = "xyz"), "incorrect `label.alpha`" ) # test label.color expect_error( ggnet2(n, label = TRUE, label.color = "xyz"), "incorrect `label.color`" ) # test label.size expect_error( ggnet2(n, label = TRUE, label.size = "xyz"), "incorrect `label.size`" ) # test label.trim expect_error( ggnet2(n, label = TRUE, label.trim = "xyz"), "incorrect `label.trim`" ) ggnet2(n, label = TRUE, label.trim = toupper) # test mode expect_error(ggnet2(n, mode = "xyz"), "unsupported") expect_error(ggnet2(n, mode = letters[1:3]), "incorrect `mode`") # test edge.node shared colors ggnet2(n, color = "phono", edge.color = c("color", "grey")) # test edge.color expect_error(ggnet2(n, edge.color = "xyz"), "incorrect `edge.color`") # test edge.label.alpha expect_error( ggnet2(n, edge.label = "xyz", edge.label.alpha = "xyz"), "incorrect `edge.label.alpha`" ) # test edge.label.color expect_error( ggnet2(n, edge.label = "xyz", edge.label.color = "xyz"), "incorrect `edge.label.color`" ) # test edge.label.size expect_error( ggnet2(n, edge.label = "xyz", edge.label.size = "xyz"), "incorrect `edge.label.size`" ) # test edge.size expect_error(ggnet2(n, edge.size = "xyz"), "incorrect `edge.size`") # test layout.exp expect_error(ggnet2(n, layout.exp = "xyz")) ggnet2(n, layout.exp = 0.1) ### --- test bipartite functionality # weighted adjacency matrix bip <- data.frame( event1 = c(1, 2, 1), event2 = c(0, 0, 3), event3 = c(1, 1, 0), row.names = letters[1:3] ) # weighted bipartite network bip <- network( bip, matrix.type = "bipartite", ignore.eval = FALSE, # names.eval = "weights" ) # test bipartite mode ggnet2(bip, color = "mode") ### --- test network coercion expect_warning( ggnet2(network(matrix(1, nrow = 2, ncol = 2), loops = TRUE)), "self-loops" ) expect_error(ggnet2(1:2), "network object") expect_error(ggnet2(network(data.frame(1:2, 3:4), hyper = TRUE)), "hyper") expect_error( ggnet2(network(data.frame(1:2, 3:4), multiple = TRUE)), "multiplex graphs" ) ### --- test igraph functionality if (rq(igraph) && rq(intergraph)) { # test igraph conversion p <- ggnet2(asIgraph(n), color = "group") expect_null(p$guides$colour) # test igraph degree ggnet2(n, size = "degree") expect_true(TRUE) } }) GGally/tests/testthat/test-ggfacet.R0000644000176200001440000000213015027521001017120 0ustar liggesuserstest_that("simple test with iris data", { p <- ggfacet(iris, columnsX = 1:2, columnsY = 3:4) expect_s3_class(p, "ggplot") expect_equal(dim(p$data), c(4L * nrow(iris), ncol(iris) + 4L)) expect_equal( dim(ggfacet(mtcars, columnsX = 1:2, columnsY = 3:5)$data), c(6L * nrow(mtcars), ncol(mtcars) + 4L) ) }) test_that("warnings", { expect_warning( ggfacet(iris, columnsX = 1:5, columnsY = 1), "1 factor variables are being removed from X columns" ) expect_warning( ggfacet(iris, columnsX = 1, columnsY = 1:5), "1 factor variables are being removed from Y columns" ) }) test_that("generally works", { skip_if_not_installed("chemometrics") data(NIR, package = "chemometrics") NIR_sub <- data.frame(NIR$yGlcEtOH, NIR$xNIR[, 1:3]) # factor variables ggally_expect_doppelganger( "factor", ggfacet( NIR_sub, columnsY = 1:2, columnsX = 3:5, fn = ggally_smooth_loess ) ) ggally_expect_doppelganger( "pigs", ggts( pigs, "time", c("gilts", "profit", "s_per_herdsz", "production", "herdsz") ) ) }) GGally/tests/testthat/test-ggbivariate.R0000644000176200001440000000261715027521001020016 0ustar liggesuserstest_that("example", { data(tips) p <- ggbivariate(tips, "smoker", c("day", "time", "sex", "tip")) ggally_expect_doppelganger("tips", p) # Personalize plot title and legend title p <- ggbivariate( tips, "smoker", c("day", "time", "sex", "tip"), title = "Custom title" ) + labs(fill = "Smoker ?") ggally_expect_doppelganger("tips-title", p) # Customize fill colour scale p <- ggbivariate(tips, "smoker", c("day", "time", "sex", "tip")) + scale_fill_brewer(type = "qual") ggally_expect_doppelganger("tips-fill-qual", p) # Customize labels p <- ggbivariate( tips, "smoker", c("day", "time", "sex", "tip"), rowbar_args = list( colour = "white", size = 4, fontface = "bold", label_format = scales::label_percent(accurary = 1) ) ) ggally_expect_doppelganger("tips-rowbar", p) # Choose the sub-plot from which get legend p <- ggbivariate(tips, "smoker") ggally_expect_doppelganger("tips-legend-default", p) ggbivariate(tips, "smoker", legend = 3) ggally_expect_doppelganger("tips-legend-3", p) # Use mapping to indicate weights d <- as.data.frame(Titanic) p <- ggbivariate(d, "Survived", mapping = aes(weight = Freq)) ggally_expect_doppelganger("titanic-weight-freq", p) # outcome can be numerical p <- ggbivariate(tips, outcome = "tip", title = "tip") ggally_expect_doppelganger("tips-numeric", p) }) GGally/tests/testthat.R0000644000176200001440000000061015023101257014547 0ustar liggesusers# This file is part of the standard setup for testthat. # It is recommended that you do not modify it. # # Where should you do additional test configuration? # Learn more about the roles of 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GGally/R/0000755000176200001440000000000015050662137011637 5ustar liggesusersGGally/R/ggnetworkmap.R0000644000176200001440000004036115047655270014501 0ustar liggesusers#' Network plot map overlay #' #' Plots a network with \pkg{ggplot2} suitable for overlay on a \pkg{ggmap} plot or \pkg{ggplot2} #' #' This is a descendant of the original \code{ggnet} function. \code{ggnet} added the innovation of plotting the network geographically. #' However, \code{ggnet} needed to be the first object in the ggplot chain. \code{ggnetworkmap} does not. If passed a \code{ggplot} object as its first argument, #' such as output from \code{ggmap}, \code{ggnetworkmap} will plot on top of that chart, looking for vertex attributes \code{lon} and \code{lat} as coordinates. #' Otherwise, \code{ggnetworkmap} will generate coordinates using the Fruchterman-Reingold algorithm. #' #' @export #' @param gg an object of class \code{ggplot}. #' @param net an object of class \code{\link[network]{network}}, or any object #' that can be coerced to this class, such as an adjacency or incidence matrix, #' or an edge list: see \link[network]{edgeset.constructors} and #' \link[network]{network} for details. If the object is of class #' [igraph][igraph::igraph-package] and the #' [intergraph][intergraph::intergraph-package] package is installed, #' it will be used to convert the object: see #' \code{\link[intergraph]{asNetwork}} for details. #' @param size size of the network nodes. Defaults to 3. If the nodes are weighted, their area is proportionally scaled up to the size set by \code{size}. #' @param alpha a level of transparency for nodes, vertices and arrows. Defaults to 0.75. #' @param weight if present, the unquoted name of a vertex attribute in \code{data}. Otherwise nodes are unweighted. #' @param node.group \code{NULL}, the default, or the unquoted name of a vertex attribute that will be used to determine the color of each node. #' @param ring.group if not \code{NULL}, the default, the unquoted name of a vertex attribute that will be used to determine the color of each node border. #' @param node.color If \code{node.group} is null, a character string specifying a color. #' @param node.alpha transparency of the nodes. Inherits from \code{alpha}. #' @param segment.alpha transparency of the vertex links. Inherits from \code{alpha} #' @param segment.color color of the vertex links. Defaults to \code{"grey"}. #' @param segment.size size of the vertex links, as a vector of values or as a single value. Defaults to 0.25. #' @param great.circles whether to draw edges as great circles using the \code{geosphere} package. Defaults to \code{FALSE} #' @param arrow.size size of the vertex arrows for directed network plotting, in centimeters. Defaults to 0. #' @param label.nodes label nodes with their vertex names attribute. If set to \code{TRUE}, all nodes are labelled. Also accepts a vector of character strings to match with vertex names. #' @param label.size size of the labels. Defaults to \code{size / 2}. #' @param ... other arguments supplied to geom_text for the node labels. Arguments pertaining to the title or other items can be achieved through \pkg{ggplot2} methods. #' @author Amos Elberg. Original by Moritz Marbach, Francois Briatte #' @details This is a function for plotting graphs generated by \code{network} or \code{igraph} in a more flexible and elegant manner than permitted by ggnet. The function does not need to be the first plot in the ggplot chain, so the graph can be plotted on top of a map or other chart. Segments can be straight lines, or plotted as great circles. Note that the great circles feature can produce odd results with arrows and with vertices beyond the plot edges; this is a \pkg{ggplot2} limitation and cannot yet be fixed. Nodes can have two color schemes, which are then plotted as the center and ring around the node. The color schemes are selected by adding scale_fill_ or scale_color_ just like any other \pkg{ggplot2} plot. If there are no rings, scale_color sets the color of the nodes. If there are rings, scale_color sets the color of the rings, and scale_fill sets the color of the centers. Note that additional arguments in the ... are passed to geom_text for plotting labels. #' @importFrom dplyr bind_rows #' @importFrom utils installed.packages #' @examples #' library(dplyr) #' # small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' invisible(lapply(c("ggplot2", "maps", "network", "sna"), base::library, character.only = TRUE)) #' #' ## Example showing great circles on a simple map of the USA #' if (require(airports) && require(network) && require(sna)) { #' dms_to_number <- function(dms) { #' parts <- strsplit(dms, "-")[[1]] #' degrees <- as.numeric(parts[1]) #' minutes <- as.numeric(parts[2]) / 60 #' seconds <- as.numeric(sub(parts[3], pattern = "N|W", replacement = "")) / 3600 #' direction <- if (grepl("W", parts[3])) -1 else 1 #' return(direction * (degrees + minutes + seconds)) #' } #' airports <- #' airports::usairports |> #' filter( #' !is.na(cert_type_date), #' grepl("N", arp_latitude), #' grepl("W", arp_longitude) #' ) |> #' mutate( #' lat = vapply(arp_latitude, dms_to_number, numeric(1)), #' long = vapply(arp_longitude, dms_to_number, numeric(1)) #' ) |> #' as.data.frame() #' rownames(airports) <- airports$location_id #' #' # select some random flights #' set.seed(123) #' flights <- data.frame( #' origin = sample(airports[200:400, ]$location_id, 200, replace = TRUE), #' destination = sample(airports[200:400, ]$location_id, 200, replace = TRUE) #' ) #' #' # convert to network #' flights <- network::network(flights, directed = TRUE) #' #' # add geographic coordinates #' flights %v% "lat" <- airports[network.vertex.names(flights), "lat"] #' flights %v% "lon" <- airports[network.vertex.names(flights), "long"] #' #' # drop isolated airports #' network::delete.vertices(flights, which(sna::degree(flights) < 2)) #' #' # compute degree centrality #' flights %v% "degree" <- sna::degree(flights, gmode = "digraph") #' #' # add random groups #' flights %v% "mygroup" <- sample(letters[1:4], network.size(flights), replace = TRUE) #' #' # create a map of the USA #' usa <- ggplot(map_data("usa"), aes(x = long, y = lat)) + #' geom_polygon(aes(group = group), #' color = "grey65", #' fill = "#f9f9f9", linewidth = 0.2 #' ) #' #' # overlay network data to map #' p <- ggnetworkmap( #' usa, flights, #' size = 4, great.circles = TRUE, #' node.group = mygroup, segment.color = "steelblue", #' ring.group = degree, weight = degree #' ) + #' coord_map("albers", lat0 = 45.5, lat1 = 29.5) #' p_(p) #' #' ## Exploring a community of spambots found on Twitter #' ## Data by Amos Elberg: see ?twitter_spambots for details #' #' data(twitter_spambots) #' #' # create a world map #' world <- fortify(map("world", plot = FALSE, fill = TRUE)) #' world <- ggplot(world, aes(x = long, y = lat)) + #' geom_polygon(aes(group = group), #' color = "grey65", #' fill = "#f9f9f9", linewidth = 0.2 #' ) #' #' # view global structure #' p <- ggnetworkmap(world, twitter_spambots) #' p_(p) #' #' # domestic distribution #' p <- ggnetworkmap(net = twitter_spambots) #' p_(p) #' #' # topology #' p <- ggnetworkmap(net = twitter_spambots, arrow.size = 0.5) #' p_(p) #' #' # compute indegree and outdegree centrality #' twitter_spambots %v% "indegree" <- sna::degree(twitter_spambots, cmode = "indegree") #' twitter_spambots %v% "outdegree" <- sna::degree(twitter_spambots, cmode = "outdegree") #' #' p <- ggnetworkmap( #' net = twitter_spambots, #' arrow.size = 0.5, #' node.group = indegree, #' ring.group = outdegree, size = 4 #' ) + #' scale_fill_continuous("Indegree", high = "red", low = "yellow") + #' labs(color = "Outdegree") #' p_(p) #' #' # show some vertex attributes associated with each account #' p <- ggnetworkmap( #' net = twitter_spambots, #' arrow.size = 0.5, #' node.group = followers, #' ring.group = friends, #' size = 4, #' weight = indegree, #' label.nodes = TRUE, vjust = -1.5 #' ) + #' scale_fill_continuous("Followers", high = "red", low = "yellow") + #' labs(color = "Friends") + #' scale_color_continuous(low = "lightgreen", high = "darkgreen") #' p_(p) #' } #' ggnetworkmap <- function( gg, net, size = 3, alpha = 0.75, weight, node.group, node.color = NULL, node.alpha = NULL, ring.group, segment.alpha = NULL, segment.color = "grey", great.circles = FALSE, segment.size = 0.25, arrow.size = 0, label.nodes = FALSE, label.size = size / 2, ... ) { rlang::check_installed(c("network", "sna")) # sna # node placement if there is no ggplot object in function call # -- conversion to network class --------------------------------------------- if (inherits(net, "igraph")) { rlang::check_installed("intergraph") net <- intergraph::asNetwork(net) } if (!network::is.network(net)) { net <- try(network::network(net), silent = TRUE) } if (!network::is.network(net)) { cli::cli_abort("could not coerce {.arg net} to a {.pkg network} object") } # -- network functions ------------------------------------------------------- get_v <- utils::getFromNamespace("%v%", ns = "network") # -- network structure ------------------------------------------------------- vattr <- network::list.vertex.attributes(net) is_dir <- ifelse(network::is.directed(net), "digraph", "graph") if (!is.numeric(arrow.size) || arrow.size < 0) { cli::cli_abort("incorrect {.arg arrow.size} value") } else if (arrow.size > 0 && is_dir == "graph") { cli::cli_warn("network is undirected; {.arg arrow.size} ignored") arrow.size <- 0 } if (network::is.hyper(net)) { cli::cli_abort("{.fn ggnetworkmap} cannot plot hyper graphs") } if (network::is.multiplex(net)) { cli::cli_abort("{.fn ggnetworkmap} cannot plot multiplex graphs") } if (network::has.loops(net)) { cli::cli_warn("{.fn ggnetworkmap} does not know how to handle self-loops") } # -- ... ------------------------------------------------------- # get arguments labels <- label.nodes # alpha default inherit <- function(x) ifelse(is.null(x), alpha, x) # get sociomatrix m <- network::as.matrix.network.adjacency(net) if (missing(gg)) { # mapproj doesn't need to be loaded, but # it needs to exist for ggplot2::coord_map() to work properly rlang::check_installed("mapproj") gg <- ggplot() + coord_map() plotcord <- sna::gplot.layout.fruchtermanreingold( net, list(m, layout.par = NULL) ) plotcord <- data.frame(plotcord) colnames(plotcord) <- c("lon", "lat") } else { plotcord <- data.frame( lon = as.numeric(get_v(net, "lon")), lat = as.numeric(get_v(net, "lat")) ) } # Correct vertex labels if (!is.logical(labels)) { stopifnot(length(labels) == nrow(plotcord)) plotcord$.label <- labels } else if ("id" %in% vattr) { plotcord$.label <- as.character(get_v(net, "id")) } else if ("vertex.names" %in% vattr) { plotcord$.label <- network::network.vertex.names(net) } point_aes <- list( x = substitute(lon), y = substitute(lat) ) point_args <- list( alpha = substitute(inherit(node.alpha)) ) # get node groups if (!missing(node.group)) { plotcord$.ngroup <- get_v(net, as.character(substitute(node.group))) if (missing(ring.group)) { point_aes$color <- substitute(.ngroup) } else { point_aes$fill <- substitute(.ngroup) } } else if (!missing(node.color)) { point_args$color <- substitute(node.color) } else { point_args$color <- substitute("black") } # rings if (!missing(ring.group)) { plotcord$.rgroup <- get_v(net, as.character(substitute(ring.group))) point_aes$color <- substitute(.rgroup) point_args$pch <- substitute(21) } # # # Plot edges # # # get edgelist edges <- network::as.matrix.network.edgelist(net) edges <- data.frame( lat1 = plotcord[edges[, 1], "lat"], lon1 = plotcord[edges[, 1], "lon"], lat2 = plotcord[edges[, 2], "lat"], lon2 = plotcord[edges[, 2], "lon"] ) edges <- na.omit(edges) keep_idx <- with(edges, !(lat1 == lat2 & lon2 == lon2)) edges <- edges[!is.na(keep_idx) & keep_idx, ] edge_args <- list( linewidth = substitute(segment.size), alpha = substitute(inherit(segment.alpha)), color = substitute(segment.color) ) edge_aes <- list() # -- edge arrows ------------------------------------------------------------- if (!missing(arrow.size) && arrow.size > 0) { edge_args$arrow <- substitute(arrow( type = "closed", length = unit(arrow.size, "cm") )) } # -- great circles ----------------------------------------------------------- if (great.circles) { # geosphere # great circles rlang::check_installed("geosphere") pts <- 25 # number of intermediate points for drawing great circles i <- 0 # used to keep track of groups when getting intermediate points for great circles process_edges <- function(lat1, lat2, lon1, lon2) { p1Mat <- data.frame(lon = lon1, lat = lat1) colnames(p1Mat) <- NULL p2Mat <- data.frame(lon = lon2, lat = lat2) colnames(p2Mat) <- NULL inter <- geosphere::gcIntermediate( p1 = p1Mat, p2 = p2Mat, n = pts, addStartEnd = TRUE, breakAtDateLine = TRUE ) if (!is.list(inter)) { i <<- i + 1 inter <- data.frame(inter) inter$group <- i return(inter) } else { if (is.matrix(inter[[1]])) { i <<- i + 1 ret <- data.frame(inter[[1]]) ret$group <- i i <<- i + 1 ret2 <- data.frame(inter[[2]]) ret2$group <- i return(rbind(ret, ret2)) } else { ret <- data.frame( lon = numeric(0), lat = numeric(0), group = numeric(0) ) for (j in 1:length(inter)) { i <<- i + 1 ret1 <- data.frame(inter[[j]][[1]]) ret1$group <- i i <<- i + 1 ret2 <- data.frame(inter[[j]][[2]]) ret2$group <- i ret <- rbind(ret, ret1, ret2) } return(ret) } } } edges <- edges |> reframe( .by = c("lat1", "lat2", "lon1", "lon2"), process_edges(.data$lat1, .data$lat2, .data$lon1, .data$lon2) ) |> dplyr::select("lat", "lon", "group") edge_aes$x <- substitute(lon) edge_aes$y <- substitute(lat) edge_aes$group <- substitute(group) edge_args$data <- substitute(edges) edge_args$mapping <- do.call(aes, edge_aes) gg <- gg + do.call(geom_path, edge_args) } else { edge_aes$x <- substitute(lon1) edge_aes$y <- substitute(lat1) edge_aes$xend <- substitute(lon2) edge_aes$yend <- substitute(lat2) edge_args$data <- substitute(edges) edge_args$mapping <- do.call(aes, edge_aes) gg <- gg + do.call(geom_segment, edge_args) } # # # Done drawing edges, time to draws nodes # # # custom weights: vertex attribute # null weighting sizer <- NULL if (missing(weight)) { point_args$size <- substitute(size) } else { # Setup weight-sizing plotcord$.weight <- get_v(net, as.character(substitute(weight))) # proportional scaling if (is.factor(plotcord$.weight)) { sizer <- scale_size_discrete( name = substitute(weight), range = c(size / nlevels(plotcord$weight), size) ) } else { sizer <- scale_size_area(name = substitute(weight), max_size = size) } point_aes$size <- substitute(.weight) } # Add points to plot point_args$data <- substitute(plotcord) point_args$mapping <- do.call(aes, point_aes) gg <- gg + do.call(geom_point, point_args) if (!is.null(sizer)) { gg <- gg + sizer } # -- node labels ------------------------------------------------------------- if (isTRUE(labels)) { gg <- gg + geom_text( data = plotcord, aes(x = .data$lon, y = .data$lat, label = .data$.label), size = label.size, ... ) } gg <- gg + scale_x_continuous(breaks = NULL) + scale_y_continuous(breaks = NULL) + labs(color = "", fill = "", size = "", y = NULL, x = NULL) + theme( panel.background = element_blank(), legend.key = element_blank() ) return(gg) } GGally/R/ggpairs.R0000644000176200001440000011134515047655266013436 0ustar liggesusers# list of the different plot types to check # continuous # points # smooth # smooth_loess # density # cor # blank # combo # box # box_no_facet # dot # dot_no_facet # facethist # facetdensity # denstrip # blank # discrete # ratio # count # facetbar # blank # diag # continuous # densityDiag # barDiag # blankDiag # discrete # barDiag # blankDiag crosstalk_key <- function() { ".crossTalkKey" } fortify_SharedData <- function(model, data, ...) { key <- model$key() set <- model$groupName() data <- model$origData() # need a consistent name so we know how to access it in ggplotly() # MUST be added last. can NOT be done first data[[crosstalk_key()]] <- key structure(data, set = set) } fix_data <- function(data) { if (inherits(data, "SharedData")) { data <- fortify_SharedData(data) } data <- fortify(data) data <- as.data.frame(data) for (i in 1:dim(data)[2]) { if (is.character(data[[i]])) { data[[i]] <- as.factor(data[[i]]) } } data } fix_data_slim <- function(data, isSharedData) { if (isSharedData) { data[[crosstalk_key()]] <- NULL } data } fix_column_values <- function( data, columns, columnLabels, columnsName, columnLabelsName, isSharedData = FALSE ) { colnamesData <- colnames(data) if (is.character(columns)) { colNumValues <- lapply(columns, function(colName) { which(colnamesData == colName) }) isFound <- as.logical(unlist(lapply(colNumValues, length))) if (any(!isFound)) { cols_not_found <- toString(str_c("'", columns[!isFound], "'")) cli::cli_abort( c( "Columns in {.code {columnsName}} not found in data: {.code {cols_not_found}}.", "i" = "Choices: {.code {colnamesData}}" ) ) } columns <- unlist(colNumValues) } if (any(columns > ncol(data))) { cli::cli_abort(c( "Make sure your numeric {.val {columnsName}} values are less than or equal to {ncol(data)}.", "*" = "{columnsName} = c({toString(columns)})" )) } if (any(columns < 1)) { cli::cli_abort(c( "Make sure your numeric {.val {columnsName}} values are positive.", "*" = "columnsName = c({toString(columns)})" )) } if (any((columns %% 1) != 0)) { cli::cli_abort(c( "Make sure your numeric {.val {columnsName}} values are integers.", "*" = "columnsName = c(toString(columns))" )) } if (!is.null(columnLabels)) { if (length(columnLabels) != length(columns)) { cli::cli_abort(c( "The length of the {.arg {columnLabelsName}} does not match the length of the {.arg {columnsName}} being used.", "*" = "Labels: c({toString(columnLabels)})", "*" = "Columns: c({toString(columns)})" )) } } columns } stop_if_bad_mapping <- function(mapping) { if (is.numeric(mapping)) { cli::cli_abort( "{.arg mapping} should not be numeric unless 'columns' is missing from function call." ) } } fix_axis_label_choice <- function(axisLabels, axisLabelChoices) { if (length(axisLabels) > 1) { axisLabels <- axisLabels[1] } axisLabelChoice <- pmatch(axisLabels, axisLabelChoices) if (is.na(axisLabelChoice)) { cli::cli_warn( "{.arg axisLabels} not in c({toString(str_c(\"'\", axisLabelChoices, \"'\"))}). Reverting to '{axisLabelChoices[1]}'." ) axisLabelChoice <- 1 } axisLabels <- axisLabelChoices[axisLabelChoice] } stop_if_high_cardinality <- function(data, columns, threshold) { if (is.null(threshold)) { return() } if (identical(threshold, FALSE)) { return() } if (!is.numeric(threshold)) { cli::cli_abort( "{.arg cardinality_threshold} should be a numeric or {.code NULL}." ) } for (col in names(data[columns])) { data_col <- data[[col]] if (!is.numeric(data_col)) { level_length <- length(levels(data_col)) if (level_length > threshold) { cli::cli_abort(c( "Column {.val {col}} has more levels ({level_length}) than the threshold ({threshold}) allowed.", i = "Please remove the column or increase the 'cardinality_threshold' parameter. Increasing the cardinality_threshold may produce long processing times." )) } } } } #' \pkg{ggplot2} generalized pairs plot for two columns sets of data #' #' Make a matrix of plots with a given data set with two different column sets #' #' @details #' \code{types} is a list that may contain the variables #' 'continuous', 'combo', 'discrete', and 'na'. Each element of the list may be a function or a string. If a string is supplied, If a string is supplied, it must be a character string representing the tail end of a \code{ggally_NAME} function. The list of current valid \code{ggally_NAME} functions is visible in a dedicated vignette. #' \describe{ #' \item{continuous}{This option is used for continuous X and Y data.} #' \item{comboHorizontal}{This option is used for either continuous X and categorical Y data or categorical X and continuous Y data.} #' \item{comboVertical}{This option is used for either continuous X and categorical Y data or categorical X and continuous Y data.} #' \item{discrete}{This option is used for categorical X and Y data.} #' \item{na}{This option is used when all X data is \code{NA}, all Y data is \code{NA}, or either all X or Y data is \code{NA}.} #' } #' #' If 'blank' is ever chosen as an option, then ggduo will produce an empty plot. #' #' If a function is supplied as an option, it should implement the function api of \code{function(data, mapping, ...){#make ggplot2 plot}}. If a specific function needs its parameters set, \code{\link{wrap}(fn, param1 = val1, param2 = val2)} the function with its parameters. #' #' @export #' @param data data set using. Can have both numerical and categorical data. #' @param mapping aesthetic mapping (besides \code{x} and \code{y}). See \code{\link[ggplot2]{aes}()}. If \code{mapping} is numeric, \code{columns} will be set to the \code{mapping} value and \code{mapping} will be set to \code{NULL}. #' @param columnsX,columnsY which columns are used to make plots. Defaults to all columns. #' @param title,xlab,ylab title, x label, and y label for the graph #' @param types see Details #' @param axisLabels either "show" to display axisLabels or "none" for no axis labels #' @param columnLabelsX,columnLabelsY label names to be displayed. Defaults to names of columns being used. #' @template ggmatrix-labeller-param #' @template ggmatrix-switch-param #' @param showStrips boolean to determine if each plot's strips should be displayed. \code{NULL} will default to the top and right side plots only. \code{TRUE} or \code{FALSE} will turn all strips on or off respectively. #' @template ggmatrix-legend-param #' @param cardinality_threshold maximum number of levels allowed in a character / factor column. Set this value to NULL to not check factor columns. Defaults to 15 #' @template ggmatrix-progress #' @param legends `r lifecycle::badge('deprecated')` #' @param xProportions,yProportions Value to change how much area is given for each plot. Either \code{NULL} (default), numeric value matching respective length, \code{grid::\link[grid]{unit}} object with matching respective length or \code{"auto"} for automatic relative proportions based on the number of levels for categorical variables. #' @export #' @examples #' # small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(baseball) #' #' # Keep players from 1990-1995 with at least one at bat #' # Add how many singles a player hit #' # (must do in two steps as X1b is used in calculations) #' dt <- transform( #' subset(baseball, year >= 1990 & year <= 1995 & ab > 0), #' X1b = h - X2b - X3b - hr #' ) #' # Add #' # the player's batting average, #' # the player's slugging percentage, #' # and the player's on base percentage #' # Make factor a year, as each season is discrete #' dt <- transform( #' dt, #' batting_avg = h / ab, #' slug = (X1b + 2 * X2b + 3 * X3b + 4 * hr) / ab, #' on_base = (h + bb + hbp) / (ab + bb + hbp), #' year = as.factor(year) #' ) #' #' #' pm <- ggduo( #' dt, #' c("year", "g", "ab", "lg"), #' c("batting_avg", "slug", "on_base"), #' mapping = ggplot2::aes(color = lg) #' ) #' # Prints, but #' # there is severe over plotting in the continuous plots #' # the labels could be better #' # want to add more hitting information #' p_(pm) #' #' # address overplotting issues and add a title #' pm <- ggduo( #' dt, #' c("year", "g", "ab", "lg"), #' c("batting_avg", "slug", "on_base"), #' columnLabelsX = c("year", "player game count", "player at bat count", "league"), #' columnLabelsY = c("batting avg", "slug %", "on base %"), #' title = "Baseball Hitting Stats from 1990-1995", #' mapping = ggplot2::aes(color = lg), #' types = list( #' # change the shape and add some transparency to the points #' continuous = wrap("smooth_loess", alpha = 0.50, shape = "+") #' ), #' showStrips = FALSE #' ) #' #' p_(pm) #' #' # Use "auto" to adapt width of the sub-plots #' pm <- ggduo( #' dt, #' c("year", "g", "ab", "lg"), #' c("batting_avg", "slug", "on_base"), #' mapping = ggplot2::aes(color = lg), #' xProportions = "auto" #' ) #' #' p_(pm) #' #' # Custom widths & heights of the sub-plots #' pm <- ggduo( #' dt, #' c("year", "g", "ab", "lg"), #' c("batting_avg", "slug", "on_base"), #' mapping = ggplot2::aes(color = lg), #' xProportions = c(6, 4, 3, 2), #' yProportions = c(1, 2, 1) #' ) #' #' p_(pm) #' #' # Example derived from: #' ## R Data Analysis Examples | Canonical Correlation Analysis. UCLA: Institute for Digital #' ## Research and Education. #' ## from http://www.stats.idre.ucla.edu/r/dae/canonical-correlation-analysis #' ## (accessed May 22, 2017). #' # "Example 1. A researcher has collected data on three psychological variables, four #' # academic variables (standardized test scores) and gender for 600 college freshman. #' # She is interested in how the set of psychological variables relates to the academic #' # variables and gender. In particular, the researcher is interested in how many #' # dimensions (canonical variables) are necessary to understand the association between #' # the two sets of variables." #' data(psychademic) #' summary(psychademic) #' #' (psych_variables <- attr(psychademic, "psychology")) #' (academic_variables <- attr(psychademic, "academic")) #' #' ## Within correlation #' p_(ggpairs(psychademic, columns = psych_variables)) #' p_(ggpairs(psychademic, columns = academic_variables)) #' #' ## Between correlation #' loess_with_cor <- function(data, mapping, ..., method = "pearson") { #' x <- eval_data_col(data, mapping$x) #' y <- eval_data_col(data, mapping$y) #' cor <- cor(x, y, method = method) #' ggally_smooth_loess(data, mapping, ...) + #' ggplot2::geom_label( #' data = data.frame( #' x = min(x, na.rm = TRUE), #' y = max(y, na.rm = TRUE), #' lab = round(cor, digits = 3) #' ), #' mapping = ggplot2::aes(x = x, y = y, label = lab), #' hjust = 0, vjust = 1, #' size = 5, fontface = "bold", #' inherit.aes = FALSE # do not inherit anything from the ... #' ) #' } #' pm <- ggduo( #' psychademic, #' rev(psych_variables), academic_variables, #' types = list(continuous = loess_with_cor), #' showStrips = FALSE #' ) #' suppressWarnings(p_(pm)) # ignore warnings from loess #' #' # add color according to sex #' pm <- ggduo( #' psychademic, #' mapping = ggplot2::aes(color = sex), #' rev(psych_variables), academic_variables, #' types = list(continuous = loess_with_cor), #' showStrips = FALSE, #' legend = c(5, 2) #' ) #' suppressWarnings(p_(pm)) #' #' #' # add color according to sex #' pm <- ggduo( #' psychademic, #' mapping = ggplot2::aes(color = motivation), #' rev(psych_variables), academic_variables, #' types = list(continuous = loess_with_cor), #' showStrips = FALSE, #' legend = c(5, 2) #' ) + #' ggplot2::theme(legend.position = "bottom") #' suppressWarnings(p_(pm)) # pm <- ggduo( #' # dt, #' # c("year", "g", "ab", "lg", "lg"), #' # c("batting_avg", "slug", "on_base", "hit_type"), #' # columnLabelsX = c("year", "player game count", "player at bat count", "league", ""), #' # columnLabelsY = c("batting avg", "slug %", "on base %", "hit type"), #' # title = "Baseball Hitting Stats from 1990-1995 (player strike in 1994)", #' # mapping = aes(color = year), #' # types = list( #' # continuous = wrap("smooth_loess", alpha = 0.50, shape = "+"), #' # comboHorizontal = wrap(display_hit_type_combo, binwidth = 15), #' # discrete = wrap(display_hit_type_discrete, color = "black", size = 0.15) #' # ), #' # showStrips = FALSE # ); #' ## make the 5th column blank, except for the legend # pm[1, 5] <- NULL # pm[2, 5] <- grab_legend(pm[2, 1]) # pm[3, 5] <- NULL # pm[4, 5] <- NULL # pm # ggduo( #' # australia_PISA2012, #' # c("gender", "age", "homework", "possessions"), #' # c("PV1MATH", "PV2MATH", "PV3MATH", "PV4MATH", "PV5MATH"), #' # types = list( #' # continuous = "points", #' # combo = "box", #' # discrete = "ratio" #' # ) # ) # ggduo( #' # australia_PISA2012, #' # c("gender", "age", "homework", "possessions"), #' # c("PV1MATH", "PV2MATH", "PV3MATH", "PV4MATH", "PV5MATH"), #' # mapping = ggplot2::aes(color = gender), #' # types = list( #' # continuous = wrap("smooth", alpha = 0.25, method = "loess"), #' # combo = "box", #' # discrete = "ratio" #' # ) # ) # ggduo(australia_PISA2012, c("gender", "age", "homework", "possessions"), c("PV1MATH", "PV1READ", "PV1SCIE"), types = list(continuous = "points", combo = "box", discrete = "ratio")) # ggduo(australia_PISA2012, c("gender", "age", "homework", "possessions"), c("PV1MATH", "PV1READ", "PV1SCIE"), types = list(continuous = wrap("smooth", alpha = 0.25, method = "loess"), combo = "box", discrete = "ratio"), mapping = ggplot2::aes(color = gender)) ggduo <- function( data, mapping = NULL, columnsX = 1:ncol(data), columnsY = 1:ncol(data), title = NULL, types = list( continuous = "smooth_loess", comboVertical = "box_no_facet", comboHorizontal = "facethist", discrete = "count" ), axisLabels = c("show", "none"), columnLabelsX = colnames(data[columnsX]), columnLabelsY = colnames(data[columnsY]), labeller = "label_value", switch = NULL, xlab = NULL, ylab = NULL, showStrips = NULL, legend = NULL, cardinality_threshold = 15, progress = NULL, xProportions = NULL, yProportions = NULL, legends = deprecated() ) { if (lifecycle::is_present(legends)) { lifecycle::deprecate_warn( when = "2.3.0", what = "ggduo(legends)", details = "Ability to put legends in each plot will be dropped in next releases." ) } isSharedData <- inherits(data, "SharedData") data_ <- fix_data(data) data <- fix_data_slim(data_, isSharedData) # fix args if ( !missing(mapping) && !is.list(mapping) && !missing(columnsX) && missing(columnsY) ) { columnsY <- columnsX columnsX <- mapping mapping <- NULL } stop_if_bad_mapping(mapping) columnsX <- fix_column_values( data, columnsX, columnLabelsX, "columnsX", "columnLabelsX" ) columnsY <- fix_column_values( data, columnsY, columnLabelsY, "columnsY", "columnLabelsY" ) stop_if_high_cardinality(data, columnsX, cardinality_threshold) stop_if_high_cardinality(data, columnsY, cardinality_threshold) xProportions <- ggmatrix_proportions(xProportions, data, columnsX) yProportions <- ggmatrix_proportions(yProportions, data, columnsY) types <- check_and_set_ggpairs_defaults( "types", types, continuous = "smooth_loess", discrete = "count", na = "na", isDuo = TRUE ) if (!is.null(types[["combo"]])) { cli::cli_warn(c( "Setting:", "*" = "{.code types$comboHorizontal <- types$combo}", "*" = "{.code types$comboVertical <- types$combo}" )) types$comboHorizontal <- types$combo types$comboVertical <- types$combo types$combo <- NULL } if (is.null(types[["comboVertical"]])) { types$comboVertical <- "box_no_facet" } if (is.null(types[["comboHorizontal"]])) { types$comboHorizontal <- "facethist" } axisLabels <- fix_axis_label_choice(axisLabels, c("show", "none")) # get plot type information dataTypes <- plot_types(data, columnsX, columnsY, allowDiag = FALSE) ggduoPlots <- lapply(seq_len(nrow(dataTypes)), function(i) { plotType <- dataTypes[i, "plotType"] # posX <- dataTypes[i, "posX"] # posY <- dataTypes[i, "posY"] xColName <- dataTypes[i, "xVar"] yColName <- dataTypes[i, "yVar"] sectionAes <- add_and_overwrite_aes( add_and_overwrite_aes( aes(x = !!as.name(xColName), y = !!as.name(yColName)), mapping ), types$mapping ) if (plotType == "combo") { if (dataTypes[i, "isVertical"]) { plotTypesList <- list(combo = types$comboVertical) } else { plotTypesList <- list(combo = types$comboHorizontal) } } else { plotTypesList <- types } args <- list(types = plotTypesList, sectionAes = sectionAes) plot_fn <- ggmatrix_plot_list(plotType) plotObj <- do.call(plot_fn, args) return(plotObj) }) plotMatrix <- ggmatrix( plots = ggduoPlots, byrow = TRUE, nrow = length(columnsY), ncol = length(columnsX), xAxisLabels = columnLabelsX, yAxisLabels = columnLabelsY, labeller = labeller, switch = switch, showStrips = showStrips, showXAxisPlotLabels = identical(axisLabels, "show"), showYAxisPlotLabels = identical(axisLabels, "show"), title = title, xlab = xlab, ylab = ylab, data = data_, gg = NULL, progress = progress, legend = legend, xProportions = xProportions, yProportions = yProportions ) plotMatrix } ### Example removed due to not using facet labels anymore # #Sequence to show how to change label size # make_small_strip <- function(plot_matrix, from_top, from_left, new_size = 7){ # up <- from_left > from_top # p <- getPlot(plot_matrix, from_top, from_left) # if (up) # p <- p + opts(strip.text.x = element_text(size = new_size)) # else # p <- p + opts(strip.text.y = element_text(angle = -90, size = new_size)) # # putPlot(plot_matrix, p, from_top, from_left) # } # small_label_diamond <- make_small_strip(diamondMatrix, 2, 1) # small_label_diamond <- make_small_strip(small_label_diamond, 1, 2) # small_label_diamond <- make_small_strip(small_label_diamond, 2, 2) # #small_label_diamond # now with much smaller strip text #' ggplot2 generalized pairs plot #' #' Make a matrix of plots with a given data set #' #' @details #' \code{upper} and \code{lower} are lists that may contain the variables #' 'continuous', 'combo', 'discrete', and 'na'. Each element of the list may be a function or a string. If a string is supplied, it must be a character string representing the tail end of a \code{ggally_NAME} function. The list of current valid \code{ggally_NAME} functions is visible in a dedicated vignette. #' \describe{ #' \item{continuous}{This option is used for continuous X and Y data.} #' \item{combo}{This option is used for either continuous X and categorical Y data or categorical X and continuous Y data.} #' \item{discrete}{This option is used for categorical X and Y data.} #' \item{na}{This option is used when all X data is \code{NA}, all Y data is \code{NA}, or either all X or Y data is \code{NA}.} #' } #' #' \code{diag} is a list that may only contain the variables 'continuous', 'discrete', and 'na'. Each element of the diag list is a string implementing the following options: #' \describe{ #' \item{continuous}{exactly one of ('densityDiag', 'barDiag', 'blankDiag'). This option is used for continuous X data.} #' \item{discrete}{exactly one of ('barDiag', 'blankDiag'). This option is used for categorical X and Y data.} #' \item{na}{exactly one of ('naDiag', 'blankDiag'). This option is used when all X data is \code{NA}.} #' } #' #' If 'blank' is ever chosen as an option, then ggpairs will produce an empty plot. #' #' If a function is supplied as an option to \code{upper}, \code{lower}, or \code{diag}, it should implement the function api of \code{function(data, mapping, ...){#make ggplot2 plot}}. If a specific function needs its parameters set, \code{\link{wrap}(fn, param1 = val1, param2 = val2)} the function with its parameters. #' #' @export #' @seealso wrap v1_ggmatrix_theme #' @param data data set using. Can have both numerical and categorical data. #' @param mapping aesthetic mapping (besides \code{x} and \code{y}). See \code{\link[ggplot2]{aes}()}. If \code{mapping} is numeric, \code{columns} will be set to the \code{mapping} value and \code{mapping} will be set to \code{NULL}. #' @param columns which columns are used to make plots. Defaults to all columns. #' @param title,xlab,ylab title, x label, and y label for the graph #' @param upper see Details #' @param lower see Details #' @param diag see Details #' @param params `r lifecycle::badge("deprecated")` see \code{\link{wrap_fn_with_param_arg}} #' @param ... `r lifecycle::badge("deprecated")` use \code{mapping} #' @param axisLabels either "show" to display axisLabels, "internal" for labels in the diagonal plots, or "none" for no axis labels #' @param columnLabels label names to be displayed. Defaults to names of columns being used. #' @param proportions Value to change how much area is given for each plot. Either \code{NULL} (default), numeric value matching respective length, \code{grid::\link[grid]{unit}} object with matching respective length or \code{"auto"} for automatic relative proportions based on the number of levels for categorical variables. #' @template ggmatrix-labeller-param #' @template ggmatrix-switch-param #' @param showStrips boolean to determine if each plot's strips should be displayed. \code{NULL} will default to the top and right side plots only. \code{TRUE} or \code{FALSE} will turn all strips on or off respectively. #' @template ggmatrix-legend-param #' @param cardinality_threshold maximum number of levels allowed in a character / factor column. Set this value to NULL to not check factor columns. Defaults to 15 #' @template ggmatrix-progress #' @param legends `r lifecycle::badge("deprecated")` #' @keywords hplot #' @import ggplot2 #' @references John W Emerson, Walton A Green, Barret Schloerke, Jason Crowley, Dianne Cook, Heike Hofmann, Hadley Wickham. The Generalized Pairs Plot. Journal of Computational and Graphical Statistics, vol. 22, no. 1, pp. 79-91, 2012. #' @author Barret Schloerke, Jason Crowley, Di Cook, Heike Hofmann, Hadley Wickham #' @return \code{\link{ggmatrix}} object that if called, will print #' @examples #' # small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' #' ## Quick example, with and without colour #' data(flea) #' ggpairs(flea, columns = 2:4) #' pm <- ggpairs(flea, columns = 2:4, ggplot2::aes(colour = species)) #' p_(pm) #' # Note: colour should be categorical, else you will need to reset #' # the upper triangle to use points instead of trying to compute corr #' #' data(tips) #' pm <- ggpairs(tips[, 1:3]) #' p_(pm) #' pm <- ggpairs(tips, 1:3, columnLabels = c("Total Bill", "Tip", "Sex")) #' p_(pm) #' pm <- ggpairs(tips, upper = "blank") #' p_(pm) #' #' ## Plot Types #' # Change default plot behavior #' pm <- ggpairs( #' tips[, c(1, 3, 4, 2)], #' upper = list(continuous = "density", combo = "box_no_facet"), #' lower = list(continuous = "points", combo = "dot_no_facet") #' ) #' p_(pm) #' # Supply Raw Functions (may be user defined functions!) #' pm <- ggpairs( #' tips[, c(1, 3, 4, 2)], #' upper = list(continuous = ggally_density, combo = ggally_box_no_facet), #' lower = list(continuous = ggally_points, combo = ggally_dot_no_facet) #' ) #' p_(pm) #' #' # Use sample of the diamonds data #' data(diamonds, package = "ggplot2") #' diamonds.samp <- diamonds[sample(1:dim(diamonds)[1], 1000), ] #' #' # Different aesthetics for different plot sections and plot types #' pm <- ggpairs( #' diamonds.samp[, 1:5], #' mapping = ggplot2::aes(color = cut), #' upper = list(continuous = wrap("density", alpha = 0.5), combo = "box_no_facet"), #' lower = list(continuous = wrap("points", alpha = 0.3), combo = wrap("dot_no_facet", alpha = 0.4)), #' title = "Diamonds" #' ) #' p_(pm) #' #' ## Axis Label Variations #' # Only Variable Labels on the diagonal (no axis labels) #' pm <- ggpairs(tips[, 1:3], axisLabels = "internal") #' p_(pm) #' # Only Variable Labels on the outside (no axis labels) #' pm <- ggpairs(tips[, 1:3], axisLabels = "none") #' p_(pm) #' #' ## Facet Label Variations #' # Default: #' df_x <- rnorm(100) #' df_y <- df_x + rnorm(100, 0, 0.1) #' df <- data.frame(x = df_x, y = df_y, c = sqrt(df_x^2 + df_y^2)) #' pm <- ggpairs( #' df, #' columnLabels = c("alpha[foo]", "alpha[bar]", "sqrt(alpha[foo]^2 + alpha[bar]^2)") #' ) #' p_(pm) #' # Parsed labels: #' pm <- ggpairs( #' df, #' columnLabels = c("alpha[foo]", "alpha[bar]", "sqrt(alpha[foo]^2 + alpha[bar]^2)"), #' labeller = "label_parsed" #' ) #' p_(pm) #' #' ## Plot Insertion Example #' custom_car <- ggpairs(mtcars[, c("mpg", "wt", "cyl")], upper = "blank", title = "Custom Example") #' # ggplot example taken from example(geom_text) #' plot <- ggplot2::ggplot(mtcars, ggplot2::aes(x = wt, y = mpg, label = rownames(mtcars))) #' plot <- plot + #' ggplot2::geom_text(ggplot2::aes(colour = factor(cyl)), size = 3) + #' ggplot2::scale_colour_discrete(l = 40) #' custom_car[1, 2] <- plot #' personal_plot <- ggally_text( #' "ggpairs allows you\nto put in your\nown plot.\nLike that one.\n <---" #' ) #' custom_car[1, 3] <- personal_plot #' p_(custom_car) #' #' ## Remove binwidth warning from ggplot2 #' # displays warning about picking a better binwidth #' pm <- ggpairs(tips, 2:3) #' p_(pm) #' # no warning displayed #' pm <- ggpairs(tips, 2:3, lower = list(combo = wrap("facethist", binwidth = 0.5))) #' p_(pm) #' # no warning displayed with user supplied function #' pm <- ggpairs(tips, 2:3, lower = list(combo = wrap(ggally_facethist, binwidth = 0.5))) #' p_(pm) #' #' ## Remove panel grid lines from correlation plots #' pm <- ggpairs( #' flea, #' columns = 2:4, #' upper = list(continuous = wrap(ggally_cor, displayGrid = FALSE)) #' ) #' p_(pm) #' #' ## Custom with/height of subplots #' pm <- ggpairs(tips, columns = c(2, 3, 5)) #' p_(pm) #' #' pm <- ggpairs(tips, columns = c(2, 3, 5), proportions = "auto") #' p_(pm) #' #' pm <- ggpairs(tips, columns = c(2, 3, 5), proportions = c(1, 3, 2)) #' p_(pm) #' ggpairs <- function( data, mapping = NULL, columns = 1:ncol(data), title = NULL, upper = list( continuous = "cor", combo = "box_no_facet", discrete = "count", na = "na" ), lower = list( continuous = "points", combo = "facethist", discrete = "facetbar", na = "na" ), diag = list(continuous = "densityDiag", discrete = "barDiag", na = "naDiag"), params = deprecated(), ..., xlab = NULL, ylab = NULL, axisLabels = c("show", "internal", "none"), columnLabels = colnames(data[columns]), labeller = "label_value", switch = NULL, showStrips = NULL, legend = NULL, cardinality_threshold = 15, progress = NULL, proportions = NULL, legends = deprecated() ) { if (lifecycle::is_present(legends)) { lifecycle::deprecate_warn( when = "2.3.0", what = "ggpairs(legends)", details = "Ability to put legends in each plot will be dropped in next releases." ) } if (lifecycle::is_present(params)) { lifecycle::deprecate_warn( when = "2.3.0", what = "ggpairs(params)" ) } has_dots <- rlang::check_dots_empty(error = function(cnd) { TRUE }) if (isTRUE(has_dots)) { lifecycle::deprecate_soft(when = "2.3.0", what = "ggpais(...)") } isSharedData <- inherits(data, "SharedData") data_ <- fix_data(data) data <- fix_data_slim(data_, isSharedData) if (!missing(mapping) && !is.list(mapping) && missing(columns)) { columns <- mapping mapping <- NULL } stop_if_bad_mapping(mapping) columns <- fix_column_values( data, columns, columnLabels, "columns", "columnLabels" ) stop_if_high_cardinality(data, columns, cardinality_threshold) upper <- check_and_set_ggpairs_defaults( "upper", upper, continuous = "cor", combo = "box_no_facet", discrete = "count", na = "na" ) lower <- check_and_set_ggpairs_defaults( "lower", lower, continuous = "points", combo = "facethist", discrete = "facetbar", na = "na" ) diag <- check_and_set_ggpairs_defaults( "diag", diag, continuous = "densityDiag", discrete = "barDiag", na = "naDiag", isDiag = TRUE ) axisLabels <- fix_axis_label_choice(axisLabels, c("show", "internal", "none")) proportions <- ggmatrix_proportions(proportions, data, columns) # get plot type information dataTypes <- plot_types(data, columns, columns, allowDiag = TRUE) # make internal labels on the diag axis if (identical(axisLabels, "internal")) { dataTypes$plotType[dataTypes$posX == dataTypes$posY] <- "label" } ggpairsPlots <- lapply(seq_len(nrow(dataTypes)), function(i) { plotType <- dataTypes[i, "plotType"] posX <- dataTypes[i, "posX"] posY <- dataTypes[i, "posY"] xColName <- dataTypes[i, "xVar"] yColName <- dataTypes[i, "yVar"] if (posX > posY) { types <- upper } else if (posX < posY) { types <- lower } else { types <- diag } sectionAes <- add_and_overwrite_aes( add_and_overwrite_aes( aes(x = !!as.name(xColName), y = !!as.name(yColName)), mapping ), types$mapping ) args <- list(types = types, sectionAes = sectionAes) if (plotType == "label") { args$label <- columnLabels[posX] } plot_fn <- ggmatrix_plot_list(plotType) p <- do.call(plot_fn, args) return(p) }) plotMatrix <- ggmatrix( plots = ggpairsPlots, byrow = TRUE, nrow = length(columns), ncol = length(columns), xAxisLabels = (if (axisLabels == "internal") NULL else columnLabels), yAxisLabels = (if (axisLabels == "internal") NULL else columnLabels), labeller = labeller, switch = switch, showStrips = showStrips, showXAxisPlotLabels = identical(axisLabels, "show"), showYAxisPlotLabels = identical(axisLabels, "show"), title = title, xlab = xlab, ylab = ylab, data = data_, gg = NULL, progress = progress, legend = legend, xProportions = proportions, yProportions = proportions ) plotMatrix } #' Add new aes #' #' Add new aesthetics to a previous aes. #' #' @keywords internal #' @author Barret Schloerke #' @return aes_ output #' @import ggplot2 #' @rdname add_and_overwrite_aes #' @examples #' data(diamonds, package = "ggplot2") #' diamonds.samp <- diamonds[sample(1:dim(diamonds)[1], 1000), ] #' pm <- ggpairs(diamonds.samp, #' columns = 5:7, #' mapping = ggplot2::aes(color = color), #' upper = list(continuous = "cor", mapping = ggplot2::aes(color = clarity)), #' lower = list(continuous = "cor", mapping = ggplot2::aes(color = cut)), #' title = "Diamonds Sample" #' ) #' str(pm) #' add_and_overwrite_aes <- function(current, new) { if (length(new) >= 1) { for (i in 1:length(new)) { current[names(new)[i]] <- new[i] } } for (curName in names(current)) { if (is.null(current[[curName]])) { current[[curName]] <- NULL } } current } #' Aesthetic mapping color fill #' #' Replace the fill with the color and make color NULL. #' #' @param current the current aesthetics #' @export mapping_color_to_fill <- function(current) { if (is.null(current)) { return(aes()) } currentNames <- names(current) color <- c("color", "colour") if (any(color %in% currentNames) && "fill" %in% currentNames) { # do nothing } else if (any(color %in% currentNames)) { # fill <- current[["fill" %in% currentNames]] # col <- current[[color %in% currentNames]] # current <- add_and_overwrite_aes(current, aes_string(fill = col, color = NA)) current$fill <- current$colour current$colour <- NULL } # if (!is.null(mapping$colour) && !is.null(mapping$fill)) { # # do nothing # } else if (!is.null(mapping$colour)) { # } current } set_to_blank_list_if_blank <- function( val, combo = TRUE, blank = "blank", isDuo = FALSE ) { isBlank <- is.null(val) if (!isBlank) { isBlank <- (!is.list(val) && (val == blank || val == "blank")) } if (isBlank) { val <- list() val$continuous <- blank if (combo) { val$combo <- blank } if (isDuo) { val$comboVertical <- blank val$comboHorizontal <- blank } val$discrete <- blank val$na <- blank } val } check_and_set_ggpairs_defaults <- function( name, obj, continuous = NULL, combo = NULL, discrete = NULL, na = NULL, isDiag = FALSE, isDuo = FALSE ) { blankVal <- ifelse(isDiag, "blankDiag", "blank") obj <- set_to_blank_list_if_blank( obj, combo = !isDiag && !isDuo, blank = blankVal, isDuo = isDuo ) if (!is.list(obj)) { cli::cli_abort("{.arg {name}} is not a list") } stop_if_params_exist(obj$params) if (is.null(obj$continuous) && (!is.null(continuous))) { obj$continuous <- continuous } if (is.null(obj$combo) && (!is.null(combo))) { obj$combo <- combo } if (is.null(obj$discrete) && (!is.null(discrete))) { obj$discrete <- discrete } if (is.null(obj$na) && (!is.null(na))) { obj$na <- na } if (!is.null(obj$aes_string)) { cli::cli_abort( "{.fn aes_string} is a deprecated element for the section {name}.\nPlease use 'mapping' instead." ) } if (isDiag) { for (key in c("continuous", "discrete", "na")) { val <- obj[[key]] if (is.character(val)) { if (!str_detect(val, "Diag$")) { newVal <- paste(val, "Diag", sep = "") cli::cli_warn( "Changing {.code diag${key}} from {.val {val}} to {.val {newVal}}." ) obj[[key]] <- newVal } } } } obj } get_subtype_name <- function(.subType) { fn <- wrapp(.subType) ret <- attr(fn, "name") if (ret == ".subType") { ret <- "custom_function" } ret } stop_if_params_exist <- function(params) { if (!is.null(params)) { cli::cli_abort(c( "{.arg params} is a deprecated argument.", i = "Please {.fn wrap} the function to supply arguments. {.code help(\"wrap\", package = \"GGally\")}" )) } } ggmatrix_proportions <- function(proportions, data, columns) { if (is.null(proportions)) { return(proportions) } # relative proportions if "auto" # wrap in isTRUE for safe guarding if (isTRUE(length(proportions) == 1 && proportions == "auto")) { proportions <- c() for (v in columns) { if (is.numeric(data[[v]])) { proportions <- c(proportions, NA) } else { proportions <- c(proportions, length(levels(as.factor(data[[v]])))) } } # for numeric variables, the average proportions[is.na(proportions)] <- mean(proportions, na.rm = TRUE) proportions[is.na(proportions)] <- 1 # in case all are numeric } else { is_valid_type <- vapply( proportions, function(x) { (!is.na(x)) && (grid::is.unit(x) || is.numeric(x)) }, logical(1) ) if (!all(is_valid_type)) { cli::cli_abort( "{.arg proportions} need to be non-NA numeric values or {.code 'auto'}. proportions: {dput_val(proportions)}" ) } } if (length(proportions) == 1 && length(columns) > 1) { proportions <- replicate(length(columns), proportions) } proportions } dput_val <- function(x) { f <- file() on.exit({ close(f) }) dput(x, f) ret <- paste0(readLines(f), collapse = "\n") ret } # diamondMatrix <- ggpairs( # diamonds, # columns = 8:10, # upper = list(points = "scatterplot", aes_string = aes_string(color = "cut")), # lower = list(points = "scatterplot", aes_string = aes_string(color = "cut")), # diag = "blank", ## color = "color", # title = "Diamonds" # ) # if(TRUE) # { # # d <- diamonds[runif(floor(nrow(diamonds)/10), 0, nrow(diamonds)), ] # # diamondMatrix <- ggpairs( # d, # columns = 8:10, # upper = list(continuous = "points", aes_string = aes_string(color = "clarity")), # lower = list(continuous = "points", aes_string = aes_string(color = "cut")), # diag = "blank", ## color = "color", # title = "Diamonds" # ) # # # m <- mtcars ## m$vs <- as.factor(m$vs) ## m$cyl <- as.factor(m$cyl) ## m$qsec <- as.factor(m$qsec) # carsMatrix <- ggpairs( # mtcars, # columns = c(1, 3, 4), # upper = list(continuous = "points", aes_string = aes_string(shape = "cyl", size = 5)), # lower = list(continuous = "points", aes_string = aes_string(size = "cyl")), # diag = "blank", # color = "cyl", # title = "mtcars", # ) # # # carsMatrix <- ggpairs( # mtcars, # columns = c(1, 3, 4), # upper = list(aes_string = aes_string(shape = "as.factor(cyl)", size = 5)), # lower = list(aes_string = aes_string(size = "as.factor(cyl)")), # diag = "blank", # color = "cyl", # title = "Custom Cars", # ) # # # } GGally/R/data-pigs.R0000644000176200001440000000214614526737226013647 0ustar liggesusers#' United Kingdom Pig Production #' #' This data contains about the United Kingdom Pig Production from the book 'Data' by Andrews and Herzberg. The original data can be on Statlib: http://lib.stat.cmu.edu/datasets/Andrews/T62.1 #' #' The time variable has been added from a combination of year and quarter #' #' @details \itemize{ #' \item time year + (quarter - 1) / 4 #' \item year year of production #' \item quarter quarter of the year of production #' \item gilts number of sows giving birth for the first time #' \item profit ratio of price to an index of feed price #' \item s_per_herdsz ratio of the number of breeding pigs slaughtered to the total breeding herd size #' \item production number of pigs slaughtered that were reared for meat #' \item herdsz breeding herd size #' } #' #' @docType data #' @keywords datasets #' @name pigs #' @usage data(pigs) #' @format A data frame with 48 rows and 8 variables #' @references #' Andrews, David F., and Agnes M. Herzberg. Data: a collection of problems from many fields for the student and research worker. Springer Science & Business Media, 2012. NULL GGally/R/data-australia-pisa-2012.R0000644000176200001440000000502515036241467016177 0ustar liggesusers#' Programme for International Student Assessment (PISA) 2012 Data for Australia #' #' About PISA #' #' The Programme for International Student Assessment (PISA) is a triennial international survey which aims to evaluate education systems worldwide by testing the skills and knowledge of 15-year-old students. To date, students representing more than 70 economies have participated in the assessment. #' #' While 65 economies took part in the 2012 study, this data set only contains information from the country of Australia. #' #' @details \itemize{ #' \item gender : Factor w/ 2 levels "female","male": 1 1 2 2 2 1 1 1 2 1 ... #' \item age : Factor w/ 4 levels "4","5","6","7": 2 2 2 4 3 1 2 2 2 2 ... #' \item homework : num 5 5 9 3 2 3 4 3 5 1 ... #' \item desk : num 1 0 1 1 1 1 1 1 1 1 ... #' \item room : num 1 1 1 1 1 1 1 1 1 1 ... #' \item study : num 1 1 1 1 1 1 1 1 1 1 ... #' \item computer : num 1 1 1 1 1 1 1 1 1 1 ... #' \item software : num 1 1 1 1 1 1 1 1 1 1 ... #' \item internet : num 1 1 1 1 1 1 1 1 1 1 ... #' \item literature : num 0 0 1 0 1 1 1 1 1 0 ... #' \item poetry : num 0 0 1 0 1 1 0 1 1 1 ... #' \item art : num 1 0 1 0 1 1 0 1 1 1 ... #' \item textbook : num 1 1 1 1 1 0 1 1 1 1 ... #' \item dictionary : num 1 1 1 1 1 1 1 1 1 1 ... #' \item dishwasher : num 1 1 1 1 0 1 1 1 1 1 ... #' \item PV1MATH : num 562 565 602 520 613 ... #' \item PV2MATH : num 569 557 594 507 567 ... #' \item PV3MATH : num 555 553 552 501 585 ... #' \item PV4MATH : num 579 538 526 521 596 ... #' \item PV5MATH : num 548 573 619 547 603 ... #' \item PV1READ : num 582 617 650 554 605 ... #' \item PV2READ : num 571 572 608 560 557 ... #' \item PV3READ : num 602 560 594 517 627 ... #' \item PV4READ : num 572 564 575 564 597 ... #' \item PV5READ : num 585 565 620 572 598 ... #' \item PV1SCIE : num 583 627 668 574 639 ... #' \item PV2SCIE : num 579 600 665 612 635 ... #' \item PV3SCIE : num 593 574 620 571 666 ... #' \item PV4SCIE : num 567 582 592 598 700 ... #' \item PV5SCIE : num 587 625 656 662 670 ... #' \item SENWGT_STU : num 0.133 0.133 0.141 0.141 0.141 ... #' \item possessions: num 10 8 12 9 11 11 10 12 12 11 ... #' } #' #' @docType data #' @keywords datasets #' @name australia_PISA2012 #' @usage data(australia_PISA2012) #' @format A data frame with 8247 rows and 32 variables #' @source \url{https://www.oecd.org/en/data/datasets/pisa-2012-cba-database.html} NULL GGally/R/ggally_cross.R0000644000176200001440000002274615023051677014466 0ustar liggesusers#' Plots the number of observations #' #' Plot the number of observations by using square points #' with proportional areas. Could be filled according to chi-squared #' statistics computed by [stat_cross()]. Labels could also #' be added (see examples). #' #' @param data data set using #' @param mapping aesthetics being used #' @param ... other arguments passed to [ggplot2::geom_point()] #' @param scale_max_size `max_size` argument supplied to [ggplot2::scale_size_area()] #' @param geom_text_args other arguments passed to [ggplot2::geom_text()] #' @author Joseph Larmarange #' @keywords hplot #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' p_(ggally_cross(tips, mapping = aes(x = smoker, y = sex))) #' p_(ggally_cross(tips, mapping = aes(x = day, y = time))) #' #' # Custom max size #' p_(ggally_cross(tips, mapping = aes(x = smoker, y = sex)) + #' scale_size_area(max_size = 40)) #' #' # Custom fill #' p_(ggally_cross(tips, mapping = aes(x = smoker, y = sex), fill = "red")) #' #' # Custom shape #' p_(ggally_cross(tips, mapping = aes(x = smoker, y = sex), shape = 21)) #' #' # Fill squares according to standardized residuals #' d <- as.data.frame(Titanic) #' p_(ggally_cross( #' d, #' mapping = aes(x = Class, y = Survived, weight = Freq, fill = after_stat(std.resid)) #' ) + #' scale_fill_steps2(breaks = c(-3, -2, 2, 3), show.limits = TRUE)) #' #' # Add labels #' p_(ggally_cross( #' tips, #' mapping = aes( #' x = smoker, y = sex, colour = smoker, #' label = scales::percent(after_stat(prop)) #' ) #' )) #' #' # Customize labels' appearance and same size for all squares #' p_(ggally_cross( #' tips, #' mapping = aes( #' x = smoker, y = sex, #' size = NULL, # do not map size to a variable #' label = scales::percent(after_stat(prop)) #' ), #' size = 40, # fix value for points size #' fill = "darkblue", #' geom_text_args = list(colour = "white", fontface = "bold", size = 6) #' )) ggally_cross <- function( data, mapping, ..., scale_max_size = 20, geom_text_args = NULL ) { mapping <- remove_color_unless_equal(mapping, to = c("x", "y")) mapping <- mapping_color_to_fill(mapping) args <- list(...) # default values for geom_point if (!"size" %in% names(mapping)) { mapping$size <- aes(size = after_stat(!!as.name("observed")))$size } if (is.null(mapping$shape) && is.null(args$shape)) { args$shape <- 22 } if (is.null(mapping$fill) && is.null(args$fill)) { args$fill <- get_geom_defaults(GeomRect)$fill } args$keep.zero.cells <- FALSE p <- ggplot(data = data, mapping) + do.call(stat_cross, args) + scale_size_area(max_size = scale_max_size) # default values for geom_text geom_text_args$stat <- "cross" geom_text_args$keep.zero.cells <- FALSE if (is.null(geom_text_args$mapping)) { geom_text_args$mapping <- aes(colour = NULL, size = NULL) } if (is.null(geom_text_args$show.legend)) { geom_text_args$show.legend <- FALSE } if (!is.null(mapping$label)) { p <- p + do.call(geom_text, geom_text_args) } p } #' Display a table of the number of observations #' #' Plot the number of observations as a table. Other statistics computed #' by \code{\link{stat_cross}} could be used (see examples). #' #' @param data data set using #' @param mapping aesthetics being used #' @param keep.zero.cells If \code{TRUE}, display cells with no observation. #' @param ... other arguments passed to \code{\link[ggplot2]{geom_text}(...)} #' @param geom_tile_args other arguments passed to \code{\link[ggplot2]{geom_tile}(...)} #' @note The \strong{colour} aesthetic is taken into account only if equal to #' \strong{x} or \strong{y}. #' @author Joseph Larmarange #' @keywords hplot #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' p_(ggally_table(tips, mapping = aes(x = smoker, y = sex))) #' p_(ggally_table(tips, mapping = aes(x = day, y = time))) #' p_(ggally_table(tips, mapping = aes(x = smoker, y = sex, colour = smoker))) #' #' # colour is kept only if equal to x or y #' p_(ggally_table(tips, mapping = aes(x = smoker, y = sex, colour = day))) #' #' # diagonal version #' p_(ggally_tableDiag(tips, mapping = aes(x = smoker))) #' #' # custom label size and color #' p_(ggally_table(tips, mapping = aes(x = smoker, y = sex), size = 16, color = "red")) #' #' # display column proportions #' p_(ggally_table( #' tips, #' mapping = aes(x = day, y = sex, label = scales::percent(after_stat(col.prop))) #' )) #' #' # draw table cells #' p_(ggally_table( #' tips, #' mapping = aes(x = smoker, y = sex), #' geom_tile_args = list(colour = "black", fill = "white") #' )) #' #' # Use standardized residuals to fill table cells #' p_(ggally_table( #' as.data.frame(Titanic), #' mapping = aes( #' x = Class, y = Survived, weight = Freq, #' fill = after_stat(std.resid), #' label = scales::percent(after_stat(col.prop), accuracy = .1) #' ), #' geom_tile_args = list(colour = "black") #' ) + #' scale_fill_steps2(breaks = c(-3, -2, 2, 3), show.limits = TRUE)) ggally_table <- function( data, mapping, keep.zero.cells = FALSE, ..., geom_tile_args = NULL ) { mapping <- remove_color_unless_equal(mapping, to = c("x", "y")) # default values geom_text if (!"label" %in% names(mapping)) { mapping$label <- aes(label = after_stat(!!as.name("observed")))$label } geom_text_args <- list(...) geom_text_args$stat <- "cross" geom_text_args$keep.zero.cells <- keep.zero.cells # default values geom_tile geom_tile_args$stat <- "cross" geom_tile_args$keep.zero.cells <- keep.zero.cells geom_tile_args$mapping <- aes(colour = NULL)$colour if (is.null(geom_tile_args$colour)) { geom_tile_args$colour <- "transparent" } if (is.null(mapping$fill) && is.null(geom_tile_args$fill)) { geom_tile_args$fill <- "transparent" } ggplot(data = data, mapping) + do.call(geom_tile, geom_tile_args) + do.call(geom_text, geom_text_args) } #' @export #' @rdname ggally_table ggally_tableDiag <- function( data, mapping, keep.zero.cells = FALSE, ..., geom_tile_args = NULL ) { mapping$y <- mapping$x ggally_table( data = data, mapping = mapping, keep.zero.cells = keep.zero.cells, ..., geom_tile_args = geom_tile_args ) } #' Display a cross-tabulated table #' #' \code{ggally_crosstable} is a variation of \code{\link{ggally_table}} with few modifications: (i) table cells are drawn; (ii) x and y axis are not expanded (and therefore are not aligned with other \code{ggally_*} plots); (iii) content and fill of cells can be easily controlled with dedicated arguments. #' @param data data set using #' @param mapping aesthetics being used #' @param cells Which statistic should be displayed in table cells? #' @param fill Which statistic should be used for filling table cells? #' @param ... other arguments passed to \code{\link[ggplot2]{geom_text}(...)} #' @param geom_tile_args other arguments passed to \code{\link[ggplot2]{geom_tile}(...)} #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' #' # differences with ggally_table() #' p_(ggally_table(tips, mapping = aes(x = day, y = time))) #' p_(ggally_crosstable(tips, mapping = aes(x = day, y = time))) #' #' # display column proportions #' p_(ggally_crosstable(tips, mapping = aes(x = day, y = sex), cells = "col.prop")) #' #' # display row proportions #' p_(ggally_crosstable(tips, mapping = aes(x = day, y = sex), cells = "row.prop")) #' #' # change size of text #' p_(ggally_crosstable(tips, mapping = aes(x = day, y = sex), size = 8)) #' #' # fill cells with standardized residuals #' p_(ggally_crosstable(tips, mapping = aes(x = day, y = sex), fill = "std.resid")) #' #' # change scale for fill #' p_(ggally_crosstable(tips, mapping = aes(x = day, y = sex), fill = "std.resid") + #' scale_fill_steps2(breaks = c(-2, 0, 2), show.limits = TRUE)) ggally_crosstable <- function( data, mapping, cells = c( "observed", "prop", "row.prop", "col.prop", "expected", "resid", "std.resid" ), fill = c("none", "std.resid", "resid"), ..., geom_tile_args = list(colour = "grey50") ) { fill <- match.arg(fill) if (fill == "std.resid") { mapping$fill <- aes(fill = after_stat(!!as.name("std.resid")))$fill } if (fill == "resid") { mapping$fill <- aes(fill = after_stat(!!as.name("resid")))$fill } if (fill == "none") { geom_tile_args$fill <- "white" } cells <- match.arg(cells) if (!"label" %in% names(mapping) && cells %in% c("observed", "expected")) { mapping$label <- aes( label = scales::number(after_stat(!!as.name(cells)), accuracy = 1) )$label } if ( !"label" %in% names(mapping) && cells %in% c("prop", "row.prop", "col.prop") ) { mapping$label <- aes( label = scales::percent(after_stat(!!as.name(cells)), accuracy = .1) )$label } if (!"label" %in% names(mapping) && cells %in% c("resid", "std.resid")) { mapping$label <- aes( label = scales::number(after_stat(!!as.name(cells)), accuracy = .1) )$label } p <- ggally_table( data = data, mapping = mapping, keep.zero.cells = TRUE, geom_tile_args = geom_tile_args, ... ) + scale_x_discrete(expand = expansion(0, 0)) + scale_y_discrete(expand = expansion(0, 0)) + theme(axis.ticks = element_blank()) if (fill == "std.resid") { p <- p + scale_fill_steps2(breaks = c(-Inf, -3, -2, 2, 3, Inf)) } p } GGally/R/ggsave.R0000644000176200001440000000016614527265752013253 0ustar liggesusers#' @export # @examples # ggsave("test.pdf", ggpairs(iris, 1:2)) grid.draw.ggmatrix <- function(x, ...) { print(x) } GGally/R/data-tips.R0000644000176200001440000000145514526737231013662 0ustar liggesusers#' Tipping data #' #' #' One waiter recorded information about each tip he received over a #' period of a few months working in one restaurant. He collected several #' variables: #' #' \itemize{ #' \item tip in dollars, #' \item bill in dollars, #' \item sex of the bill payer, #' \item whether there were smokers in the party, #' \item day of the week, #' \item time of day, #' \item size of the party. #' } #' #' In all he recorded 244 tips. The data was reported in a collection of #' case studies for business statistics (Bryant & Smith 1995). #' #' @references Bryant, P. G. and Smith, M (1995) \emph{Practical Data #' Analysis: Case Studies in Business Statistics}. Homewood, IL: Richard D. #' Irwin Publishing: #' @format A data frame with 244 rows and 7 variables #' @keywords datasets "tips" GGally/R/ggnet.R0000644000176200001440000006157615047655266013120 0ustar liggesusers#' Network plot #' #' @description #' `r lifecycle::badge("deprecated")` #' #' Function for plotting network objects using \pkg{ggplot2}, now replaced by the #' \code{\link{ggnet2}} function, which provides additional control over #' plotting parameters. Please visit \url{https://github.com/briatte/ggnet} for #' the latest version of ggnet2, and \url{https://briatte.github.io/ggnet/} for a #' vignette that contains many examples and explanations. #' #' @export #' @param net an object of class \code{\link[network]{network}}, or any object #' that can be coerced to this class, such as an adjacency or incidence matrix, #' or an edge list: see \link[network]{edgeset.constructors} and #' \link[network]{network} for details. If the object is of class #' [igraph][igraph::igraph-package] and the #' [intergraph][intergraph::intergraph-package] package is installed, #' it will be used to convert the object: see #' \code{\link[intergraph]{asNetwork}} for details. #' @param mode a placement method from those provided in the #' \code{\link[sna]{sna}} package: see \link[sna:gplot.layout]{gplot.layout} for #' details. Also accepts the names of two numeric vertex attributes of #' \code{net}, or a matrix of numeric coordinates, in which case the first two #' columns of the matrix are used. #' Defaults to the Fruchterman-Reingold force-directed algorithm. #' @param layout.par options to be passed to the placement method, as listed in #' \link[sna]{gplot.layout}. #' Defaults to \code{NULL}. #' @param layout.exp a multiplier to expand the horizontal axis if node labels #' get clipped: see \link[scales]{expand_range} for details. #' Defaults to \code{0} (no expansion). #' @param size size of the network nodes. If the nodes are weighted, their area is proportionally scaled up to the size set by \code{size}. #' Defaults to \code{9}. #' @param alpha a level of transparency for nodes, vertices and arrows. #' Defaults to \code{1}. #' @param weight the weighting method for the nodes, which might be a vertex #' attribute or a vector of size values. Also accepts \code{"indegree"}, #' \code{"outdegree"}, \code{"degree"} or \code{"freeman"} to size the nodes by #' their unweighted degree centrality (\code{"degree"} and \code{"freeman"} are #' equivalent): see \code{\link[sna]{degree}} for details. All node weights must #' be positive. #' Defaults to \code{"none"} (no weighting). #' @param weight.method see \code{weight} #' @param weight.legend the name to assign to the legend created by #' \code{weight}. #' Defaults to \code{NA} (no name). #' @param weight.min whether to subset the network to nodes with a minimum size, #' based on the values of \code{weight}. #' Defaults to \code{NA} (preserves all nodes). #' @param weight.max whether to subset the network to nodes with a maximum size, #' based on the values of \code{weight}. #' Defaults to \code{NA} (preserves all nodes). #' @param weight.cut whether to cut the size of the nodes into a certain number #' of quantiles. Accepts \code{TRUE}, which tries to cut the sizes into #' quartiles, or any positive numeric value, which tries to cut the sizes into #' that many quantiles. If the size of the nodes do not contain the specified #' number of distinct quantiles, the largest possible number is used. #' See \code{\link[stats]{quantile}} and \code{\link[base]{cut}} for details. #' Defaults to \code{FALSE} (does nothing). #' @param group the groups of the nodes, either as a vector of values or as a #' vertex attribute. If set to \code{mode} on a bipartite network, the nodes #' will be grouped as \code{"actor"} if they belong to the primary mode and #' \code{"event"} if they belong to the secondary mode. #' @param group.legend the name to assign to the legend created by #' \code{group}. #' @param node.group see \code{group} #' @param node.color a vector of character strings to color the nodes with, #' holding as many colors as there are levels in \code{node.group}. #' Defaults to \code{NULL}, which will assign grayscale colors to each group. #' @param node.alpha transparency of the nodes. Inherits from \code{alpha}. #' @param segment.alpha the level of transparency of the edges. #' Defaults to \code{alpha}, which defaults to \code{1}. #' @param segment.color the color of the edges, as a color value, a vector of #' color values, or as an edge attribute containing color values. #' Defaults to \code{"grey50"}. #' @param segment.size the size of the edges, in points, as a single numeric #' value, a vector of values, or as an edge attribute. #' Defaults to \code{0.25}. #' @param segment.label the labels to plot at the middle of the edges, as a #' single value, a vector of values, or as an edge attribute. #' Defaults to \code{NULL} (no edge labels). #' @param arrow.size the size of the arrows for directed network edges, in #' points. See \code{\link[grid]{arrow}} for details. #' Defaults to \code{0} (no arrows). #' @param arrow.gap a setting aimed at improving the display of edge arrows by #' plotting slightly shorter edges. Accepts any value between \code{0} and #' \code{1}, where a value of \code{0.05} will generally achieve good results #' when the size of the nodes is reasonably small. #' Defaults to \code{0} (no shortening). #' @param arrow.type the type of the arrows for directed network edges. See #' \code{\link[grid]{arrow}} for details. #' Defaults to \code{"closed"}. #' @param label whether to label the nodes. If set to \code{TRUE}, nodes are #' labeled with their vertex names. If set to a vector that contains as many #' elements as there are nodes in \code{net}, nodes are labeled with these. If #' set to any other vector of values, the nodes are labeled only when their #' vertex name matches one of these values. #' Defaults to \code{FALSE} (no labels). #' @param label.nodes see \code{label} #' @param label.size the size of the node labels, in points, as a numeric value, #' a vector of numeric values, or as a vertex attribute containing numeric #' values. #' Defaults to \code{size / 2} (half the maximum node size), which defaults to #' \code{6}. #' @param label.trim whether to apply some trimming to the node labels. Accepts #' any function that can process a character vector, or a strictly positive #' numeric value, in which case the labels are trimmed to a fixed-length #' substring of that length: see \code{\link[base]{substr}} for details. #' Defaults to \code{FALSE} (does nothing). #' @param legend.size the size of the legend symbols and text, in points. #' Defaults to \code{9}. #' @param legend.position the location of the plot legend(s). Accepts all #' \code{legend.position} values supported by \code{\link[ggplot2]{theme}}. #' Defaults to \code{"right"}. #' @param names `r lifecycle::badge("deprecated")` see \code{group.legend} and \code{size.legend} #' @param quantize.weights `r lifecycle::badge("deprecated")` see \code{weight.cut} #' @param subset.threshold `r lifecycle::badge("deprecated")` see \code{weight.min} #' @param top8.nodes `r lifecycle::badge("deprecated")` this functionality was experimental and has #' been removed entirely from \code{ggnet} #' @param trim.labels `r lifecycle::badge("deprecated")` see \code{label.trim} #' @param ... other arguments passed to the \code{geom_text} object that sets #' the node labels: see \code{\link[ggplot2]{geom_text}} for details. #' @seealso \code{\link{ggnet2}} in this package, #' \code{\link[sna]{gplot}} in the \code{\link[sna]{sna}} package, and #' \code{\link[network]{plot.network}} in the \code{\link[network]{network}} #' package #' @author Moritz Marbach and Francois Briatte, with help from Heike Hofmann, #' Pedro Jordano and Ming-Yu Liu #' @details The degree centrality measures that can be produced through the #' \code{weight} argument will take the directedness of the network into account, #' but will be unweighted. To compute weighted network measures, see the #' \code{tnet} package by Tore Opsahl (\code{help("tnet", package = "tnet")}). #' @importFrom stats quantile na.omit #' @importFrom utils head installed.packages #' @importFrom grDevices gray.colors #' @keywords internal #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' library(network) #' #' # random adjacency matrix #' x <- 10 #' ndyads <- x * (x - 1) #' density <- x / ndyads #' m <- matrix(0, nrow = x, ncol = x) #' dimnames(m) <- list(letters[1:x], letters[1:x]) #' m[row(m) != col(m)] <- runif(ndyads) < density #' m #' #' # random undirected network #' n <- network::network(m, directed = FALSE) #' n #' #' ggnet(n, label = TRUE, alpha = 1, color = "white", segment.color = "black") #' #' # random groups #' g <- sample(letters[1:3], 10, replace = TRUE) #' g #' #' # color palette #' p <- c("a" = "steelblue", "b" = "forestgreen", "c" = "tomato") #' #' p_(ggnet(n, node.group = g, node.color = p, label = TRUE, color = "white")) #' #' # edge arrows on a directed network #' p_(ggnet(network(m, directed = TRUE), arrow.gap = 0.05, arrow.size = 10)) ggnet <- function( net, mode = "fruchtermanreingold", layout.par = NULL, layout.exp = 0, size = 9, alpha = 1, weight = "none", weight.legend = NA, weight.method = weight, weight.min = NA, weight.max = NA, weight.cut = FALSE, group = NULL, group.legend = NA, node.group = group, node.color = NULL, node.alpha = alpha, segment.alpha = alpha, segment.color = "grey50", segment.label = NULL, segment.size = 0.25, arrow.size = 0, arrow.gap = 0, arrow.type = "closed", label = FALSE, label.nodes = label, label.size = size / 2, label.trim = FALSE, legend.size = 9, legend.position = "right", # -- deprecated arguments ---------------------------------------------------- names = deprecated(), quantize.weights = deprecated(), subset.threshold = deprecated(), top8.nodes = deprecated(), trim.labels = deprecated(), ... ) { lifecycle::deprecate_soft("2.2.2", "ggnet()", "ggnet2()") # -- packages ---------------------------------------------------------------- rlang::check_installed(c("network", "sna", "scales")) # -- deprecations ------------------------------------------------------------ if (length(mode) == 1 && mode == "geo") { lifecycle::deprecate_warn( when = "2.3.0", what = "ggnet(mode='cannot be `geo`')", details = "Please use mode = c('lon', 'lat') instead" ) mode = c("lon", "lat") } if (lifecycle::is_present(names)) { lifecycle::deprecate_warn( when = "2.3.0", what = "ggnet(names)", details = "Please use group.legend and size.legend instead" ) group.legend = names[1] size.legend = names[2] } if (lifecycle::is_present(quantize.weights)) { lifecycle::deprecate_warn( when = "2.3.0", what = "ggnet(quantize.weights)", details = "Please use weight.cut instead" ) weight.cut = quantize.weights } if (lifecycle::is_present(subset.threshold)) { lifecycle::deprecate_warn( when = "2.3.0", what = "ggnet(subset.threshold)", details = "Please use weight.min instead" ) weight.min = subset.threshold } if (lifecycle::is_present(top8.nodes)) { lifecycle::deprecate_warn( when = "2.3.0", what = "ggnet(top8.nodes)" ) } if (lifecycle::is_present(trim.labels)) { lifecycle::deprecate_warn( when = "2.3.0", what = "ggnet(trim.labels)", details = "Please use label.trim instead" ) label.trim = function(x) gsub("^@|^http://(www\\.)?|/$", "", x) } # -- conversion to network class --------------------------------------------- if ( inherits(net, "igraph") && "intergraph" %in% rownames(installed.packages()) ) { net = intergraph::asNetwork(net) } else if (inherits(net, "igraph")) { cli::cli_abort( "install the {.pkg intergraph} package to use {.pkg igraph} objects with {.pkg ggnet}" ) } if (!network::is.network(net)) { net = try(network::network(net), silent = TRUE) } if (!network::is.network(net)) { cli::cli_abort("could not coerce {.arg net} to a {.pkg network} object") } # -- network functions ------------------------------------------------------- get_v = utils::getFromNamespace("%v%", ns = "network") get_e = utils::getFromNamespace("%e%", ns = "network") set_mode = function( x, mode = network::get.network.attribute(x, "bipartite") ) { c(rep("actor", mode), rep("event", n_nodes - mode)) } set_node = function(x, value, mode = TRUE) { if (is.null(x) || any(is.na(x)) || any(is.infinite(x)) || any(is.nan(x))) { cli::cli_abort("incorrect {value} value") } else if (is.numeric(x) && any(x < 0)) { cli::cli_abort("incorrect {value} value") } else if (length(x) == n_nodes) { x } else if (length(x) > 1) { cli::cli_abort("incorrect {value} length") } else if (any(x %in% v_attr)) { get_v(net, x) } else if (mode && identical(x, "mode") && is_bip) { set_mode(net) } else { x } } set_edge = function(x, value) { if (is.null(x) || any(is.na(x)) || any(is.infinite(x)) || any(is.nan(x))) { cli::cli_abort("incorrect {value} value") } else if (is.numeric(x) && any(x < 0)) { cli::cli_abort("incorrect {value} value") } else if (length(x) == n_edges) { x } else if (length(x) > 1) { cli::cli_abort("incorrect {value} length") } else if (any(x %in% e_attr)) { get_e(net, x) } else { x } } set_attr = function(x) { if (length(x) == n_nodes) { x } else if (length(x) > 1) { cli::cli_abort("incorrect coordinates length") } else if (!x %in% v_attr) { cli::cli_abort("vertex attribute {x} was not found") } else if (!is.numeric(get_v(net, x))) { cli::cli_abort("vertex attribute {x} is not numeric") } else { get_v(net, x) } } set_name = function(x, y) ifelse(length(x) == 1, x, ifelse(is.na(y), "", y)) is_one = function(x) length(unique(x)) == 1 is_col = function(x) all(is.numeric(x)) | all(network::is.color(x)) # -- network structure ------------------------------------------------------- n_nodes = network::network.size(net) n_edges = network::network.edgecount(net) v_attr = network::list.vertex.attributes(net) e_attr = network::list.edge.attributes(net) is_bip = network::is.bipartite(net) is_dir = ifelse(network::is.directed(net), "digraph", "graph") if (!is.numeric(arrow.size) || arrow.size < 0) { cli::cli_abort("incorrect {.arg arrow.size} value") } else if (arrow.size > 0 && is_dir == "graph") { cli::cli_warn("network is undirected; {.arg arrow.size} ignored") arrow.size = 0 } if (!is.numeric(arrow.gap) || arrow.gap < 0 || arrow.gap > 1) { cli::cli_abort("incorrect {.arg arrow.gap} value") } else if (arrow.gap > 0 && is_dir == "graph") { cli::cli_warn("network is undirected; {.arg arrow.gap} ignored") arrow.gap = 0 } if (network::is.hyper(net)) { cli::cli_abort("{.pkg ggnet} cannot plot hyper graphs") } if (network::is.multiplex(net)) { cli::cli_abort("{.pkg ggnet} cannot plot multiplex graphs") } if (network::has.loops(net)) { cli::cli_warn("{.pkg ggnet} does not know how to handle self-loops") } # -- check size -------------------------------------------------------------- x = size if (!is.numeric(x) || is.infinite(x) || is.nan(x) || x < 0 || length(x) > 1) { cli::cli_abort("incorrect {.arg size} value") } # -- initialize dataset ------------------------------------------------------ data = data.frame( label = get_v(net, "vertex.names"), stringsAsFactors = FALSE ) # -- weight methods ---------------------------------------------------------- x = weight.method if ( length(x) == 1 && x %in% c("indegree", "outdegree", "degree", "freeman") ) { # prevent namespace conflict with igraph if ("package:igraph" %in% search()) { y = ifelse(is_dir == "digraph", "directed", "undirected") z = c( "indegree" = "in", "outdegree" = "out", "degree" = "all", "freeman" = "all" )[x] data$weight = igraph::degree( igraph_graph_adjacency_matrix(as.matrix(net), mode = y), mode = z ) } else { data$weight = sna::degree( net, gmode = is_dir, cmode = ifelse(x == "degree", "freeman", x) ) } } else if (length(x) > 1 && length(x) == n_nodes) { data$weight = x } else if (length(x) == 1 && x %in% v_attr) { data$weight = get_v(net, x) } if (!is.null(data$weight) && !is.numeric(data$weight)) { cli::cli_abort("incorrect {.arg weight.method} value") } # -- weight thresholds ------------------------------------------------------- x = ifelse(is.na(weight.min), 0, weight.min) if (length(x) > 1 || !is.numeric(x) || is.infinite(x) || is.nan(x) || x < 0) { cli::cli_abort("incorrect {.arg weight.min} value") } else if (x > 0) { x = which(data$weight < x) cli::cli_inform( "{.arg weight.min} removed {length(x)} nodes out of {nrow(data)}" ) if (length(x) > 0) { data = data[-x, ] network::delete.vertices(net, x) if (!nrow(data)) { cli::cli_warn( "{.arg weight.min} removed all nodes; nothing left to plot" ) return(invisible(NULL)) } } } x = ifelse(is.na(weight.max), 0, weight.max) if (length(x) > 1 || !is.numeric(x) || is.infinite(x) || is.nan(x) || x < 0) { cli::cli_abort("incorrect {.arg weight.max} value") } else if (x > 0) { x = which(data$weight > x) cli::cli_inform( "{.arg weight.max} removed {length(x)} nodes out of {nrow(data)}" ) if (length(x) > 0) { data = data[-x, ] network::delete.vertices(net, x) if (!nrow(data)) { cli::cli_warn( "{.arg weight.max} removed all nodes; nothing left to plot" ) return(invisible(NULL)) } } } # -- weight quantiles -------------------------------------------------------- x = weight.cut if (length(x) > 1 || is.null(x) || is.na(x) || is.infinite(x) || is.nan(x)) { cli::cli_abort("incorrect {.arg weight.cut} value") } else if (isTRUE(x)) { x = 4 } else if (is.logical(x) && !x) { x = 0 } else if (!is.numeric(x)) { cli::cli_abort("incorrect {.arg weight.cut} value") } if (x >= 1) { x = unique(quantile(data$weight, probs = seq(0, 1, by = 1 / as.integer(x)))) if (length(x) > 1) { data$weight = cut(data$weight, unique(x), include.lowest = TRUE) } else { cli::cli_warn("node weight is invariant; {.arg weight.cut} ignored") } } # -- node sizing ------------------------------------------------------------- if (is.factor(data$weight)) { sizer = scale_size_area( set_name(weight.method, weight.legend), max_size = size, breaks = sort(unique(as.integer(data$weight))), labels = levels(data$weight)[sort(unique(as.integer(data$weight)))] ) data$weight = as.integer(data$weight) } else { sizer = scale_size_area( set_name(weight.method, weight.legend), max_size = size ) } # -- node grouping ----------------------------------------------------------- if (!is.null(node.group)) { data$group = factor(set_node(node.group, "node.group")) x = length(unique(na.omit(data$group))) if (length(node.color) != x) { if (!is.null(node.color)) { cli::cli_warn( "node groups and colors are of unequal length; using grayscale colors" ) } node.color = gray.colors(x) names(node.color) = unique(na.omit(data$group)) } } # -- node labels ------------------------------------------------------------- l = label.nodes if (isTRUE(l)) { l = data$label } else if (length(l) > 1 && length(l) == n_nodes) { data$label = l } else if (length(l) == 1 && l %in% v_attr) { l = get_v(net, l) } else { l = ifelse(data$label %in% l, data$label, "") } # -- node placement ---------------------------------------------------------- if (is.character(mode) && length(mode) == 1) { mode = paste0("gplot.layout.", mode) snaNamespace = asNamespace("sna") if (!exists(mode, envir = snaNamespace)) { cli::cli_abort("unsupported placement method: {.val {mode}}") } mode = get(mode, envir = snaNamespace) # sna placement algorithm xy = network::as.matrix.network.adjacency(net) xy = do.call(mode, list(xy, layout.par)) xy = data.frame(x = xy[, 1], y = xy[, 2]) } else if (is.character(mode) && length(mode) == 2) { # fixed coordinates from vertex attributes xy = data.frame(x = set_attr(mode[1]), y = set_attr(mode[2])) } else if (is.numeric(mode) && is.matrix(mode)) { # fixed coordinates from matrix xy = data.frame(x = set_attr(mode[, 1]), y = set_attr(mode[, 2])) } else { cli::cli_abort("incorrect {.arg mode} value") } xy$x = scale(xy$x, min(xy$x), diff(range(xy$x)))[, 1] xy$y = scale(xy$y, min(xy$y), diff(range(xy$y)))[, 1] data = cbind(data, xy) # -- edge list --------------------------------------------------------------- edges = network::as.matrix.network.edgelist(net) edges = data.frame(xy[edges[, 1], ], xy[edges[, 2], ]) names(edges) = c("X1", "Y1", "X2", "Y2") # -- edge labels ------------------------------------------------------------- if (!is.null(segment.label)) { edges$midX = (edges$X1 + edges$X2) / 2 edges$midY = (edges$Y1 + edges$Y2) / 2 edges$label = set_edge(segment.label, "segment.label") } # -- plot edges -------------------------------------------------------------- p = ggplot(data, aes(x = .data$x, y = .data$y)) if (nrow(edges) > 0) { if (arrow.gap > 0) { x.length = with(edges, abs(X2 - X1)) y.length = with(edges, abs(Y2 - Y1)) arrow.gap = with(edges, arrow.gap / sqrt(x.length^2 + y.length^2)) edges$X1 = edges$X1 + arrow.gap * x.length edges$Y1 = edges$Y1 + arrow.gap * y.length edges$X2 = edges$X1 + (1 - arrow.gap) * x.length edges$Y2 = edges$Y1 + (1 - arrow.gap) * y.length } p = p + geom_segment( data = edges, aes(x = .data$X1, y = .data$Y1, xend = .data$X2, yend = .data$Y2), alpha = segment.alpha, linewidth = segment.size, color = segment.color, arrow = arrow( type = arrow.type, length = unit(arrow.size, "pt") ) ) } if (nrow(edges) > 0 && !is.null(segment.label)) { p = p + geom_point( data = edges, aes(x = .data$midX, y = .data$midY), color = "white", size = size ) + geom_text( data = edges, aes(x = .data$midX, y = .data$midY, label = label), alpha = segment.alpha, color = segment.color, size = size / 2 ) } # -- plot nodes -------------------------------------------------------------- if (length(weight.method) == 1 && weight.method == "none") { p = p + geom_point( alpha = node.alpha, size = size ) } else { p = p + geom_point( aes(size = .data$weight), alpha = node.alpha ) + sizer } # -- plot node colors -------------------------------------------------------- if (!is.null(node.group)) { p = p + aes(color = .data$group) + scale_color_manual( set_name(node.group, group.legend), values = node.color, guide = guide_legend(override.aes = list(size = legend.size)) ) } # -- plot node labels -------------------------------------------------------- if (!is_one(l) || unique(l) != "") { label.size = set_node(label.size, "label.size", mode = FALSE) if (!is.numeric(label.size)) { cli::cli_abort("incorrect {.arg label.size} value") } x = label.trim if ( length(x) > 1 || (!is.logical(x) && !is.numeric(x) && !is.function(x)) ) { cli::cli_abort("incorrect {.arg label.trim} value") } else if (is.numeric(x) && x > 0) { l = substr(l, 1, x) } else if (is.function(x)) { l = x(l) } p = p + geom_text( label = l, size = label.size, show.legend = FALSE, # required by ggplot2 >= 1.0.1.9003 ... ) } # -- horizontal scale expansion ---------------------------------------------- x = range(data$x) if (!is.numeric(layout.exp) || layout.exp < 0) { cli::cli_abort("incorrect {.arg layout.exp} value") } else if (layout.exp > 0) { x = scales::expand_range(x, layout.exp / 2) } # -- finalize ---------------------------------------------------------------- p = p + scale_x_continuous(breaks = NULL, limits = x) + scale_y_continuous(breaks = NULL) + theme( panel.background = element_blank(), panel.grid = element_blank(), axis.title = element_blank(), legend.key = element_blank(), legend.position = legend.position, legend.text = element_text(size = legend.size), legend.title = element_text(size = legend.size) ) return(p) } igraph_graph_adjacency_matrix <- function(...) { if (utils::packageVersion("igraph") >= "2.0.0") { igraph::graph_from_adjacency_matrix(...) } else { igraph::graph.adjacency(...) } } GGally/R/utils-pipe.R0000644000176200001440000000055315050621236014053 0ustar liggesusers#' Pipe operator #' #' See \code{magrittr::\link[magrittr:pipe]{\%>\%}} for details. #' #' @name %>% #' @rdname pipe #' @keywords internal #' @export #' @importFrom magrittr %>% #' @usage lhs \%>\% rhs #' @param lhs A value or the magrittr placeholder. #' @param rhs A function call using the magrittr semantics. #' @return The result of calling `rhs(lhs)`. NULL GGally/R/gg-plots.R0000644000176200001440000015501615047655266013541 0ustar liggesusers# retrieve the evaulated data column given the aes (which could possibly do operations) #' Evaluate data column #' @param data data set to evaluate the data with #' @param aes_col Single value from an \code{ggplot2::\link[ggplot2]{aes}(...)} object #' @return Aes mapping with the x and y values switched #' @export #' @examples #' mapping <- ggplot2::aes(Petal.Length) #' eval_data_col(iris, mapping$x) eval_data_col <- function(data, aes_col) { rlang::eval_tidy(aes_col, data) } #' Aes name #' @param aes_col Single value from \code{ggplot2::\link[ggplot2]{aes}(...)} #' @return character string #' @export #' @examples #' mapping <- ggplot2::aes(Petal.Length) #' mapping_string(mapping$x) mapping_string <- function(aes_col) { gsub("^~(?:\\.data\\$)?", "", deparse(aes_col, 500L)) } # is categories on the left? #' Check if plot is horizontal #' #' @param data data used in ggplot2 plot #' @param mapping ggplot2 \code{aes()} mapping #' @param val key to retrieve from \code{mapping} #' @return Boolean determining if the data is a character-like data #' @export #' @rdname is_horizontal #' @examples #' is_horizontal(iris, ggplot2::aes(Sepal.Length, Species)) # TRUE #' is_horizontal(iris, ggplot2::aes(Sepal.Length, Species), "x") # FALSE #' is_horizontal(iris, ggplot2::aes(Sepal.Length, Sepal.Width)) # FALSE is_horizontal <- function(data, mapping, val = "y") { yData <- eval_data_col(data, mapping[[val]]) is.factor(yData) || is.character(yData) || is.logical(yData) } #' @export #' @rdname is_horizontal is_character_column <- is_horizontal #' Swap x and y mapping #' @param mapping output of \code{ggplot2::\link[ggplot2]{aes}(...)} #' @return Aes mapping with the x and y values switched #' @export #' @examples #' mapping <- ggplot2::aes(Petal.Length, Sepal.Width) #' mapping #' mapping_swap_x_y(mapping) mapping_swap_x_y <- function(mapping) { tmp <- mapping$x mapping$x <- mapping$y mapping$y <- tmp mapping } #' Remove colour mapping unless found in select mapping keys #' @param mapping output of \code{ggplot2::\link[ggplot2]{aes}(...)} #' @param to set of mapping keys to check #' @return Aes mapping with colour mapping kept only if found in selected mapping keys. #' @export #' @examples #' mapping <- aes(x = sex, y = age, colour = sex) # remove_color_unless_equal(mapping, to = c("x", "y")) # remove_color_unless_equal(mapping, to = c("y")) #' #' mapping <- aes(x = sex, y = age, colour = region) #' remove_color_unless_equal(mapping) remove_color_unless_equal <- function(mapping, to = c("x", "y")) { if (!is.null(mapping$colour)) { color_str <- mapping_string(mapping$colour) for (to_val in to) { to_str <- mapping_string(mapping[[to_val]]) if (color_str == to_str) { # found! return return(mapping) } } # not found. Remove color value mapping <- mapping[names(mapping) != "colour"] } mapping } #' Scatter plot #' #' Make a scatter plot with a given data set. #' #' @param data data set using #' @param mapping aesthetics being used #' @param ... other arguments are sent to geom_point #' @author Barret Schloerke #' @export #' @keywords hplot #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(mtcars) #' p_(ggally_points(mtcars, mapping = ggplot2::aes(disp, hp))) #' p_(ggally_points(mtcars, mapping = ggplot2::aes(disp, hp))) #' p_(ggally_points( #' mtcars, #' mapping = ggplot2::aes( #' x = disp, #' y = hp, #' color = as.factor(cyl), #' size = gear #' ) #' )) ggally_points <- function(data, mapping, ...) { p <- ggplot(data = data, mapping = mapping) + geom_point(...) p } #' Scatter plot with a smoothed line #' #' Add a smoothed condition mean with a given scatter plot. #' #' Y limits are reduced to match original Y range with the goal of keeping the Y axis the same across plots. #' #' @param data data set using #' @param mapping aesthetics being used #' @param formula,... other arguments to add to geom_smooth #' @param method,se parameters supplied to \code{\link[ggplot2]{geom_smooth}} #' @param shrink boolean to determine if y range is reduced to range of points or points and error ribbon #' @author Barret Schloerke #' @export #' @keywords hplot #' @rdname ggally_smooth #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' p_(ggally_smooth(tips, mapping = ggplot2::aes(x = total_bill, y = tip))) #' p_(ggally_smooth(tips, mapping = ggplot2::aes(total_bill, tip, color = sex))) ggally_smooth <- function( data, mapping, ..., method = "lm", formula = y ~ x, se = TRUE, shrink = TRUE ) { p <- ggplot(data = data, mapping) p <- p + geom_point(...) if (!is.null(mapping$color) || !is.null(mapping$colour)) { p <- p + geom_smooth(method = method, se = se, formula = formula) } else { p <- p + geom_smooth( method = method, se = se, formula = formula, colour = I("black") ) } if (isTRUE(shrink)) { p <- p + coord_cartesian( ylim = range(eval_data_col(data, mapping$y), na.rm = TRUE) ) } p } #' @export #' @rdname ggally_smooth ggally_smooth_loess <- function(data, mapping, ...) { ggally_smooth(data = data, mapping = mapping, ..., method = "loess") } #' @export #' @rdname ggally_smooth ggally_smooth_lm <- function(data, mapping, ...) { ggally_smooth(data = data, mapping = mapping, ..., method = "lm") } #' Bivariate density plot #' #' Make a 2D density plot from a given data. #' #' The aesthetic "fill" determines whether or not \code{stat_density2d} (filled) or \code{geom_density2d} (lines) is used. #' #' @param data data set using #' @param mapping aesthetics being used #' @param ... parameters sent to either stat_density2d or geom_density2d #' @author Barret Schloerke #' @export #' @keywords hplot #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' p_(ggally_density(tips, mapping = ggplot2::aes(x = total_bill, y = tip))) #' p_(ggally_density( #' tips, #' mapping = ggplot2::aes(total_bill, tip, fill = after_stat(level)) #' )) #' p_(ggally_density( #' tips, #' mapping = ggplot2::aes(total_bill, tip, fill = after_stat(level)) #' ) + ggplot2::scale_fill_gradient(breaks = c(0.05, 0.1, 0.15, 0.2))) ggally_density <- function(data, mapping, ...) { rangeX <- range(eval_data_col(data, mapping$x), na.rm = TRUE) rangeY <- range(eval_data_col(data, mapping$y), na.rm = TRUE) p <- ggplot(data = data) + geom_point( data = data.frame(rangeX = rangeX, rangeY = rangeY), mapping = aes(x = .data$rangeX, y = .data$rangeY), alpha = 0 ) if (!is.null(mapping$fill)) { p <- p + stat_density2d(mapping = mapping, geom = "polygon", ...) } else { p <- p + geom_density2d(mapping = mapping, ...) } p } #' Correlation value plot #' #' Estimate correlation from the given data. If a color variable is supplied, the correlation will also be calculated per group. #' #' @param data data set using #' @param mapping aesthetics being used #' @param ... other arguments being supplied to \code{\link[ggplot2]{geom_text}()} for the title and groups #' @param stars logical value which determines if the significance stars should be displayed. Given the \code{\link[stats]{cor.test}} p-values, display \describe{ #' \item{\code{"***"}}{if the p-value is \verb{< 0.001}} #' \item{\code{"**"}}{if the p-value is \verb{< 0.01}} #' \item{\code{"*"}}{if the p-value is \verb{< 0.05}} #' \item{\code{"."}}{if the p-value is \verb{< 0.10}} #' \item{\code{""}}{otherwise} #' } #' @param method \code{method} supplied to cor function #' @param display_grid if \code{TRUE}, display aligned panel grid lines. If \code{FALSE} (default), display a thin panel border. #' @param digits number of digits to be displayed after the decimal point. See \code{\link[base]{formatC}} for how numbers are calculated. #' @param title_args arguments being supplied to the title's \code{\link[ggplot2]{geom_text}()} #' @param group_args arguments being supplied to the split-by-color group's \code{\link[ggplot2]{geom_text}()} #' @param justify_labels \code{justify} argument supplied when \code{\link[base]{format}}ting the labels #' @param align_percent relative align position of the text. When \code{justify_labels = 0.5}, this should not be needed to be set. #' @param use `r lifecycle::badge("deprecated")`. This variable is not used internally. Please remove it from your code. #' @param alignPercent,displayGrid `r lifecycle::badge("deprecated")`. Please use their snake-case counterparts. #' @param title title text to be displayed #' @author Barret Schloerke #' @importFrom stats complete.cases cor #' @importFrom lifecycle deprecated #' @inheritParams ggally_statistic #' @seealso \code{\link{ggally_statistic}}, \code{\link{ggally_cor_v1_5}} #' @export #' @keywords hplot #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' p_(ggally_cor(tips, mapping = ggplot2::aes(total_bill, tip))) #' # display with grid #' p_(ggally_cor( #' tips, #' mapping = ggplot2::aes(total_bill, tip), #' display_grid = TRUE #' )) #' # change text attributes #' p_(ggally_cor( #' tips, #' mapping = ggplot2::aes(x = total_bill, y = tip), #' size = 15, #' colour = I("red"), #' title = "Correlation" #' )) #' # split by a variable #' p_(ggally_cor( #' tips, #' mapping = ggplot2::aes(total_bill, tip, color = sex), #' size = 5 #' )) ggally_cor <- function( data, mapping, ..., stars = TRUE, method = "pearson", display_grid = FALSE, digits = 3, title_args = list(...), group_args = list(...), justify_labels = "right", align_percent = 0.5, title = "Corr", na.rm = NA, use = deprecated(), alignPercent = deprecated(), displayGrid = deprecated() ) { if (lifecycle::is_present(use)) { lifecycle::deprecate_warn( when = "2.3.0", what = "ggally_cor(use)", details = "`use=` is not leveraged within `ggally_cor()`. Please remove it from your code.`" ) } if (lifecycle::is_present(alignPercent)) { lifecycle::deprecate_soft( when = "2.3.0", what = "ggally_cor(alignPercent)", details = "Please use `align_percent` if alignment still needs to be adjusted." ) align_percent <- alignPercent } if (lifecycle::is_present(displayGrid)) { lifecycle::deprecate_soft( when = "2.3.0", what = "ggally_cor(displayGrid)", details = "Please use `display_grid`" ) display_grid <- displayGrid } ggally_statistic( data = data, mapping = mapping, na.rm = na.rm, align_percent = align_percent, display_grid = display_grid, title_args = title_args, group_args = group_args, justify_labels = justify_labels, justify_text = "left", sep = if ("colour" %in% names(mapping)) ": " else ":\n", title = title, text_fn = function(x, y) { if (is_date(x)) { x <- as.numeric(x) } if (is_date(y)) { y <- as.numeric(y) } if (length(x) < 3 | length(y) < 3) { cli::cli_warn("Less than 2 observations, returning {.code NA}") return("NA") } corObj <- stats::cor.test(x, y, method = method) # make sure all values have X-many decimal places cor_est <- as.numeric(corObj$estimate) cor_txt <- formatC(cor_est, digits = digits, format = "f") # if stars should be added if (isTRUE(stars)) { cor_txt <- str_c( cor_txt, signif_stars(corObj$p.value) ) } cor_txt } ) } #' Generalized text display #' #' @param data data set using #' @param mapping aesthetics being used #' @param title title text to be displayed #' @param text_fn function that takes in \code{x} and \code{y} and returns a text string #' @param na.rm logical value which determines if \code{NA} values are removed. If \code{TRUE}, no warning message will be displayed. #' @param display_grid if \code{TRUE}, display aligned panel grid lines. If \code{FALSE} (default), display a thin panel border. #' @param justify_labels \code{justify} argument supplied when \code{\link[base]{format}}ting the labels #' @param justify_text \code{justify} argument supplied when \code{\link[base]{format}}ting the returned \code{text_fn(x, y)} values #' @param sep separation value to be placed between the labels and text #' @param family font family used when displaying all text. This value will be set in \code{title_args} or \code{group_args} if no \code{family} value exists. By using \code{"mono"}, groups will align with each other. #' @param title_args arguments being supplied to the title's \code{\link[ggplot2]{geom_text}()} #' @param group_args arguments being supplied to the split-by-color group's \code{\link[ggplot2]{geom_text}()} #' @param align_percent relative align position of the text. When \code{title_hjust = 0.5} and \code{group_hjust = 0.5}, this should not be needed to be set. #' @param title_hjust,group_hjust \code{hjust} sent to \code{\link[ggplot2]{geom_text}()} for the title and group values respectively. Any \code{hjust} value supplied in \code{title_args} or \code{group_args} will take precedence. #' @seealso \code{\link{ggally_cor}} #' @importFrom dplyr arrange summarise #' @export ggally_statistic <- function( data, mapping, text_fn, title, na.rm = NA, display_grid = FALSE, justify_labels = "right", justify_text = "left", sep = ": ", family = "mono", title_args = list(), group_args = list(), align_percent = 0.5, title_hjust = 0.5, group_hjust = 0.5 ) { set_if_not_there <- function(obj, key, value) { obj <- as.list(obj) # if (! "family" %in% rlang::names2(obj)) { # obj$family <- family # } obj } # title_args <- set_if_not_there(title_args, "family", family) # group_args <- set_if_not_there(group_args, "family", family) title_args <- set_if_not_there(title_args, "hjust", title_hjust) group_args <- set_if_not_there(group_args, "hjust", group_hjust) xData <- eval_data_col(data, mapping$x) yData <- eval_data_col(data, mapping$y) colorData <- eval_data_col(data, mapping$colour) if (is.numeric(colorData)) { cli::cli_abort( "{.arg mapping} color column must be categorical, not numeric" ) } display_na_rm <- is.na(na.rm) if (display_na_rm) { na.rm <- TRUE } if (isTRUE(na.rm)) { if (!is.null(colorData) && (length(colorData) == length(xData))) { rows <- complete.cases(xData, yData, colorData) } else { rows <- complete.cases(xData, yData) } if (any(!rows)) { if (!is.null(colorData) && (length(colorData) == length(xData))) { colorData <- colorData[rows] } xData <- xData[rows] yData <- yData[rows] if (isTRUE(display_na_rm)) { total <- sum(!rows) if (total > 1) { cli::cli_warn("Removed {.val {total}} rows containing missing values") } else if (total == 1) { cli::cli_warn("Removing 1 row that contained a missing value") } } } } xVal <- xData yVal <- yData # if the mapping has to deal with the data, remove it ### IDK what this does. inherited from old code. for (mappingName in names(mapping)) { itemData <- eval_data_col(data, mapping[[mappingName]]) if (!inherits(itemData, "AsIs")) { mapping[[mappingName]] <- NULL } } ### END IDK # calculate variable ranges so the gridlines line up xValNum <- as.numeric(xVal) yValNum <- as.numeric(yVal) xmin <- min(xValNum, na.rm = TRUE) xmax <- max(xValNum, na.rm = TRUE) xrange <- c(xmin - 0.01 * (xmax - xmin), xmax + 0.01 * (xmax - xmin)) ymin <- min(yValNum, na.rm = TRUE) ymax <- max(yValNum, na.rm = TRUE) yrange <- c(ymin - 0.01 * (ymax - ymin), ymax + 0.01 * (ymax - ymin)) # if there is a color grouping... if (!is.null(colorData) && !inherits(colorData, "AsIs")) { cord <- data.frame(x = xData, y = yData, color = colorData) |> summarise(text = text_fn(.data$x, .data$y), .by = "color") |> arrange(.data$color) # put in correct order lev <- levels(as.factor(colorData)) ord <- rep(-1, nrow(cord)) for (i in seq_len(nrow(cord))) { for (j in seq_along(lev)) { if (identical(as.character(cord$color[i]), as.character(lev[j]))) { ord[i] <- j } } } cord <- cord[order(ord[ord >= 0]), ] # make labels align together cord$label <- str_c( format(cord$color, justify = justify_labels), sep, format(cord$text, justify = justify_text) ) # title ggally_text_args <- append( list( label = str_c(title, sep, text_fn(xVal, yVal)), mapping = mapping, xP = 0.5, yP = 0.9, xrange = xrange, yrange = yrange ), title_args ) p <- do.call(ggally_text, ggally_text_args) xPos <- rep(align_percent, nrow(cord)) * diff(xrange) + min(xrange, na.rm = TRUE) yPos <- seq(from = 0.9, to = 0.2, length.out = nrow(cord) + 1) yPos <- yPos * diff(yrange) + min(yrange, na.rm = TRUE) yPos <- yPos[-1] cordf <- data.frame(xPos = xPos, yPos = yPos, labelp = cord$label) cordf$labelp <- factor(cordf$labelp, levels = cordf$labelp) # group text values geom_text_args <- append( list( data = cordf, aes( x = .data$xPos, y = .data$yPos, label = .data$labelp, color = .data$labelp ) ), group_args ) p <- p + do.call(geom_text, geom_text_args) } else { ggally_text_args <- append( list( label = paste0(title, sep, text_fn(xVal, yVal), collapse = ""), mapping, xP = 0.5, yP = 0.5, xrange = xrange, yrange = yrange ), title_args ) p <- do.call(ggally_text, ggally_text_args) } if (!isTRUE(display_grid)) { p <- p + theme( panel.grid.major = element_blank(), panel.grid.minor = element_blank(), panel.border = element_rect( linetype = "solid", color = theme_get()$panel.background$fill, fill = "transparent" ) ) } p + theme(legend.position = "none") } #' Box plot #' #' Make a box plot with a given data set. \code{ggally_box_no_facet} will be a single panel plot, while \code{ggally_box} will be a faceted plot #' #' @param data data set using #' @param mapping aesthetics being used #' @param ... other arguments being supplied to geom_boxplot #' @author Barret Schloerke #' @keywords hplot #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' p_(ggally_box(tips, mapping = ggplot2::aes(x = total_bill, y = sex))) #' p_(ggally_box( #' tips, #' mapping = ggplot2::aes(sex, total_bill, color = sex), #' outlier.colour = "red", #' outlier.shape = 13, #' outlier.size = 8 #' )) ggally_box <- function(data, mapping, ...) { mapping <- mapping_color_to_fill(mapping) ggally_dot_and_box(data, mapping, ..., boxPlot = TRUE) } #' @export #' @rdname ggally_box ggally_box_no_facet <- function(data, mapping, ...) { mapping <- mapping_color_to_fill(mapping) ggally_dot_and_box_no_facet(data, mapping, ..., boxPlot = TRUE) } #' Grouped dot plot #' #' Add jittering with the box plot. \code{ggally_dot_no_facet} will be a single panel plot, while \code{ggally_dot} will be a faceted plot #' #' @param data data set using #' @param mapping aesthetics being used #' @param ... other arguments being supplied to geom_jitter #' @author Barret Schloerke #' @keywords hplot #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' p_(ggally_dot(tips, mapping = ggplot2::aes(x = total_bill, y = sex))) #' p_(ggally_dot( #' tips, #' mapping = ggplot2::aes(sex, total_bill, color = sex) #' )) #' p_(ggally_dot( #' tips, #' mapping = ggplot2::aes(sex, total_bill, color = sex, shape = sex) #' ) + ggplot2::scale_shape(solid = FALSE)) ggally_dot <- function(data, mapping, ...) { ggally_dot_and_box(data, mapping, ..., boxPlot = FALSE) } #' @export #' @rdname ggally_dot ggally_dot_no_facet <- function(data, mapping, ...) { ggally_dot_and_box_no_facet(data, mapping, ..., boxPlot = FALSE) } #' Box and dot plot #' #' Place box plots or dot plots on the graph #' #' @param data data set using #' @param mapping aesthetics being used #' @param ... parameters passed to either geom_jitter or geom_boxplot #' @param boxPlot boolean to decide to plot either box plots (TRUE) or dot plots (FALSE) #' @author Barret Schloerke #' @keywords internal #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' p_(ggally_dot_and_box( #' tips, #' mapping = ggplot2::aes(x = total_bill, y = sex, color = sex), #' boxPlot = TRUE #' )) #' p_(ggally_dot_and_box( #' tips, #' mapping = ggplot2::aes(x = total_bill, y = sex, color = sex), #' boxPlot = FALSE #' )) ggally_dot_and_box <- function(data, mapping, ..., boxPlot = TRUE) { horizontal <- is_horizontal(data, mapping) if (horizontal) { mapping <- mapping_swap_x_y(mapping) } xVal <- mapping_string(mapping$x) p <- ggplot(data = data) if (boxPlot) { p <- p + geom_boxplot(mapping, ...) } else { p <- p + geom_jitter(mapping, ...) } if (!horizontal) { p <- p + facet_grid(paste(". ~ ", xVal, sep = ""), scales = "free_x") + theme(panel.spacing = unit(0.1, "lines")) } else { p <- p + coord_flip() + facet_grid(paste(xVal, " ~ .", sep = ""), scales = "free_y") + theme(panel.spacing = unit(0.1, "lines")) } p } ggally_dot_and_box_no_facet <- function(data, mapping, ..., boxPlot = TRUE) { horizontal <- is_horizontal(data, mapping) if (horizontal) { mapping <- mapping_swap_x_y(mapping) } p <- ggplot(data = data) if (boxPlot) { p <- p + geom_boxplot(mapping, ...) } else { p <- p + geom_jitter(mapping, ...) } if (horizontal) { p <- p + scale_x_discrete( limits = rev(levels(as.factor(eval_data_col(data, mapping$x)))) ) + coord_flip() } p } #' Faceted histogram #' #' Display subsetted histograms of the data in different panels. #' #' @param data data set using #' @param mapping aesthetics being used #' @param ... parameters sent to stat_bin() #' @author Barret Schloerke #' @keywords hplot #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' p_(ggally_facethist(tips, mapping = ggplot2::aes(x = tip, y = sex))) #' p_(ggally_facethist(tips, mapping = ggplot2::aes(x = tip, y = sex), binwidth = 0.1)) ggally_facethist <- function(data, mapping, ...) { mapping <- mapping_color_to_fill(mapping) horizontal <- is_horizontal(data, mapping) if (!horizontal) { mapping <- mapping_swap_x_y(mapping) } xVal <- mapping_string(mapping$x) yVal <- mapping_string(mapping$y) mapping$y <- NULL p <- ggplot(data = data, mapping) p <- p + stat_bin(...) if (horizontal) { p <- p + facet_grid(paste(yVal, " ~ .", sep = "")) + theme(panel.spacing = unit(0.1, "lines")) } else { p <- p + facet_grid(paste(". ~", yVal, sep = "")) + theme(panel.spacing = unit(0.1, "lines")) + coord_flip() } p <- p + labs(x = xVal, y = yVal) p } #' Faceted density plot #' #' Make density plots by displaying subsets of the data in different panels. #' #' @param data data set using #' @param mapping aesthetics being used #' @param ... other arguments being sent to stat_density #' @author Barret Schloerke #' @keywords hplot #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' p_(ggally_facetdensity(tips, mapping = ggplot2::aes(x = total_bill, y = sex))) #' p_(ggally_facetdensity( #' tips, #' mapping = ggplot2::aes(sex, total_bill, color = sex) #' )) ggally_facetdensity <- function(data, mapping, ...) { ggally_facetdensitystrip(data, mapping, ..., den_strip = FALSE) } #' Tile plot with facets #' #' Displays a Tile Plot as densely as possible. #' #' @param data data set using #' @param mapping aesthetics being used #' @param ... other arguments being sent to stat_bin #' @author Barret Schloerke #' @keywords hplot #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' p_(ggally_denstrip(tips, mapping = ggplot2::aes(x = total_bill, y = sex))) #' p_(ggally_denstrip( #' tips, #' mapping = ggplot2::aes(sex, tip), binwidth = 0.2 #' ) + ggplot2::scale_fill_gradient(low = "grey80", high = "black")) ggally_denstrip <- function(data, mapping, ...) { mapping <- mapping_color_to_fill(mapping) ggally_facetdensitystrip(data, mapping, ..., den_strip = TRUE) } #' Density or tiles plot with facets #' #' Make tile plot or density plot as compact as possible. #' #' @param data data set using #' @param mapping aesthetics being used #' @param ... other arguments being sent to either geom_histogram or stat_density #' @param den_strip boolean to decide whether or not to plot a density strip(TRUE) or a facet density(FALSE) plot. #' @author Barret Schloerke #' @keywords hplot #' @export #' @examples #' example(ggally_facetdensity) #' example(ggally_denstrip) ggally_facetdensitystrip <- function(data, mapping, ..., den_strip = FALSE) { horizontal <- is_horizontal(data, mapping) if (!horizontal) { mapping <- mapping_swap_x_y(mapping) } xVal <- mapping_string(mapping$x) yVal <- mapping_string(mapping$y) mappingY <- mapping$y mapping$y <- NULL # will be faceted p <- ggplot(data = data, mapping) + labs(x = xVal, y = yVal) if (identical(den_strip, TRUE)) { p <- p + geom_histogram( mapping = aes(fill = after_stat(!!as.name("density"))), position = "fill", ... ) + scale_y_continuous( breaks = c(0.5), labels = "1" ) } else { p <- p + stat_density( aes( y = after_stat(!!as.name("scaled")) * diff(range(.data$x, na.rm = TRUE)) + min(.data$x, na.rm = TRUE) ), position = "identity", geom = "line", ... ) } if (horizontal) { p <- p + facet_grid(paste(yVal, " ~ .", sep = "")) if (identical(den_strip, TRUE)) { p <- p + theme(axis.text.y = element_blank()) } } else { p <- p + coord_flip() p <- p + facet_grid(paste(". ~ ", yVal, sep = "")) if (identical(den_strip, TRUE)) { p <- p + theme(axis.text.x = element_blank()) } } p } #' Univariate density plot #' #' Displays a density plot for the diagonal of a \code{\link{ggpairs}} plot matrix. #' #' @param data data set using #' @param mapping aesthetics being used. #' @param ... other arguments sent to stat_density #' @param rescale boolean to decide whether or not to rescale the count output #' @author Barret Schloerke #' @keywords hplot #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' p_(ggally_densityDiag(tips, mapping = ggplot2::aes(x = total_bill))) #' p_(ggally_densityDiag(tips, mapping = ggplot2::aes(x = total_bill, color = day))) ggally_densityDiag <- function(data, mapping, ..., rescale = FALSE) { mapping <- mapping_color_to_fill(mapping) p <- ggplot(data, mapping) + scale_y_continuous() if (identical(rescale, TRUE)) { p <- p + stat_density( aes( y = after_stat(!!as.name("scaled")) * diff(range(.data$x, na.rm = TRUE)) + min(.data$x, na.rm = TRUE) ), position = "identity", geom = "line", ... ) } else { p <- p + geom_density(...) } p } #' Bar plot #' #' Displays a bar plot for the diagonal of a \code{\link{ggpairs}} plot matrix. #' #' @param data data set using #' @param mapping aesthetics being used #' @param ... other arguments are sent to geom_bar #' @param rescale boolean to decide whether or not to rescale the count output. Only applies to numeric data #' @author Barret Schloerke #' @keywords hplot #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' p_(ggally_barDiag(tips, mapping = ggplot2::aes(x = day))) #' p_(ggally_barDiag(tips, mapping = ggplot2::aes(x = tip), binwidth = 0.25)) ggally_barDiag <- function(data, mapping, ..., rescale = FALSE) { mapping <- mapping_color_to_fill(mapping) mapping$y <- NULL x_data <- eval_data_col(data, mapping$x) numer <- ("continuous" == plotting_data_type(x_data)) p <- ggplot(data = data, mapping) if (is_date(x_data)) { p <- p + geom_histogram(...) # TODO make y axis lines match date positions # buildInfo <- ggplot_build(p + geom_bar(...)) # histBarPerc <- buildInfo$data[[1]]$ncount } else if (numer) { if (identical(rescale, TRUE)) { p <- p + geom_histogram( aes( y = after_stat(!!as.name("density")) / max(after_stat(!!as.name("density"))) * diff(range(.data$x, na.rm = TRUE)) + min(.data$x, na.rm = TRUE) ), ... ) + coord_cartesian( ylim = range(eval_data_col(data, mapping$x), na.rm = TRUE) ) } else { p <- p + geom_histogram(...) } } else { p <- p + geom_bar(...) } p } #' Text plot #' #' Plot text for a plot. #' #' @param label text that you want to appear #' @param mapping aesthetics that don't relate to position (such as color) #' @param xP horizontal position percentage #' @param yP vertical position percentage #' @param xrange range of the data around it. Only nice to have if plotting in a matrix #' @param yrange range of the data around it. Only nice to have if plotting in a matrix #' @param ... other arguments for geom_text #' @author Barret Schloerke #' @keywords hplot #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' p_(ggally_text("Example 1")) #' p_(ggally_text("Example\nTwo", mapping = ggplot2::aes(size = 15), color = I("red"))) ggally_text <- function( label, mapping = ggplot2::aes(color = I("black")), xP = 0.5, yP = 0.5, xrange = c(0, 1), yrange = c(0, 1), ... ) { theme <- theme_get() p <- ggplot() + xlim(xrange) + ylim(yrange) + theme( panel.grid.minor = element_blank(), panel.grid.major = element_line( colour = theme$panel.background$fill %||% NA ), panel.background = element_rect( fill = theme$panel.grid.major$colour %||% NA ) ) + labs(x = NULL, y = NULL) new_mapping <- aes( x = !!xP * diff(xrange) + min(xrange, na.rm = TRUE), y = !!yP * diff(yrange) + min(yrange, na.rm = TRUE) ) if (is.null(mapping)) { mapping <- new_mapping } else { mapping <- add_and_overwrite_aes(mapping, new_mapping) } # dont mess with color if it's already there if (!is.null(mapping$colour)) { p <- p + geom_text(label = label, mapping = mapping, ...) + guides(colour = "none") } else if ("colour" %in% names(aes(...))) { p <- p + geom_text(label = label, mapping = mapping, ...) } else { bg <- theme$panel.background$fill %||% "grey92" fg <- theme$axis.text$colour %||% "gray30" colour <- scales::colour_ramp(c(bg, fg))(0.75) p <- p + geom_text(label = label, mapping = mapping, colour = colour, ...) } p <- p + theme(legend.position = "none") p } #' Get x axis labels #' #' Retrieves x axis labels from the plot object directly. #' #' @importFrom gtable gtable_filter #' @param p plot object #' @param xRange range of x values #' @keywords internal get_x_axis_labels <- function(p, xRange) { pGrob <- ggplotGrob(p) axisTable <- gtable_filter(pGrob, "axis-b")$grobs[[1]]$children$axis # have to do a function as filter doesn't work get_raw_grob_by_name <- function(g, name) { for (item in g$grobs) { if (str_detect(item$name, name)) { return(item$children[[1]]) } } NULL } xAxisGrob <- get_raw_grob_by_name(axisTable, "title") axisBreaks <- as.numeric(xAxisGrob$label) axisLabs <- rbind( expand.grid(xPos = axisBreaks[1], yPos = axisBreaks), expand.grid(xPos = axisBreaks, yPos = axisBreaks[1]) )[-1, ] axisLabs <- as.data.frame(axisLabs) axisLabs$lab <- as.character(apply(axisLabs, 1, max)) axisLabs$hjust <- 0.5 axisLabs$vjust <- 0.5 minPos <- xRange[1] maxPos <- xRange[2] for (i in seq_len(nrow(axisLabs))) { xPos <- axisLabs[i, "xPos"] yPos <- axisLabs[i, "yPos"] if (yPos < minPos) { axisLabs[i, "yPos"] <- minPos axisLabs[i, "vjust"] <- 0 } else if (yPos > maxPos) { axisLabs[i, "yPos"] <- maxPos axisLabs[i, "vjust"] <- 1 } if (xPos < minPos) { axisLabs[i, "xPos"] <- minPos axisLabs[i, "hjust"] <- 0 } else if (xPos > maxPos) { axisLabs[i, "xPos"] <- maxPos axisLabs[i, "hjust"] <- 1 } } axisLabs } #' Internal axis labels for ggpairs #' #' This function is used when \code{axisLabels == "internal"}. #' #' @param data dataset being plotted #' @param mapping aesthetics being used (x is the variable the plot will be made for) #' @param label title to be displayed in the middle. Defaults to \code{mapping$x} #' @param labelSize size of variable label #' @param labelXPercent percent of horizontal range #' @param labelYPercent percent of vertical range #' @param labelHJust hjust supplied to label #' @param labelVJust vjust supplied to label #' @param gridLabelSize size of grid labels #' @param ... other arguments for geom_text #' @author Jason Crowley and Barret Schloerke #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' p_(ggally_diagAxis(tips, ggplot2::aes(x = tip))) #' p_(ggally_diagAxis(tips, ggplot2::aes(x = sex))) ggally_diagAxis <- function( data, mapping, label = mapping$x, labelSize = 5, labelXPercent = 0.5, labelYPercent = 0.55, labelHJust = 0.5, labelVJust = 0.5, gridLabelSize = 4, ... ) { if (is.null(mapping$x)) { cli::cli_abort( "mapping$x is null. There must be a column value in this location." ) } mapping$y <- NULL numer <- !is_horizontal(data, mapping, "x") if (!is.character(label)) { label <- mapping_string(mapping$x) } xData <- eval_data_col(data, mapping$x) if (numer) { xmin <- min(xData, na.rm = TRUE) xmax <- max(xData, na.rm = TRUE) # add a lil fluff... it looks better xrange <- c(xmin - .01 * (xmax - xmin), xmax + .01 * (xmax - xmin)) # xrange <- c(xmin, xmax) p <- ggally_text( label = label, mapping = aes(col = I("grey50")), xrange = xrange, yrange = xrange, size = labelSize, xP = labelXPercent, yP = labelYPercent, hjust = labelHJust, vjust = labelVJust ) axisBreaks <- get_x_axis_labels(p, xrange) # print(axisBreaks) p <- p + geom_text( data = axisBreaks, mapping = aes( x = .data$xPos, y = .data$yPos, label = .data$lab, hjust = .data$hjust, vjust = .data$"vjust" ), col = "grey50", size = gridLabelSize ) } else { breakLabels <- levels(as.factor(xData)) numLvls <- length(breakLabels) p <- ggally_text( label = label, mapping = aes(col = I("grey50")), xrange = c(0, 1), yrange = c(0, 1), size = labelSize, yP = labelYPercent, xP = labelXPercent, hjust = labelHJust, vjust = labelVJust ) # axisBreaks <- (1+2*0:(numLvls-1))/(2*numLvls) axisBreaks <- 0:(numLvls - 1) * (0.125 + (1 - 0.125 * (numLvls - 1)) / numLvls) + (1 - 0.125 * (numLvls - 1)) / (2 * numLvls) axisLabs <- data.frame( x = axisBreaks[1:numLvls], y = axisBreaks[numLvls:1], lab = breakLabels ) p <- p + geom_text( data = axisLabs, mapping = aes( x = .data$x, y = .data$y, label = .data$lab ), col = "grey50", size = gridLabelSize ) # hack to remove warning message... cuz it doesn't listen to suppress messages p$scales$scales[[1]]$breaks <- axisBreaks p$scales$scales[[2]]$breaks <- axisBreaks # pLabs <- pLabs + # scale_x_continuous(breaks = axisBreaks, limits = c(0, 1)) + # scale_y_continuous(breaks = axisBreaks, limits = c(0, 1)) } p } #' Faceted bar plot #' #' X variables are plotted using \code{geom_bar} and are faceted by the Y variable. #' #' @param data data set using #' @param mapping aesthetics being used #' @param ... other arguments are sent to geom_bar #' @author Barret Schloerke #' @keywords hplot #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' p_(ggally_facetbar(tips, ggplot2::aes(x = sex, y = smoker, fill = time))) #' p_(ggally_facetbar(tips, ggplot2::aes(x = smoker, y = sex, fill = time))) ggally_facetbar <- function(data, mapping, ...) { mapping <- mapping_color_to_fill(mapping) # numer <- is.null(attributes(data[, as.character(mapping$x)])$class) # xVal <- mapping$x yVal <- mapping_string(mapping$y) mapping$y <- NULL p <- ggplot(data, mapping) + geom_bar(...) + facet_grid(paste(yVal, " ~ .", sep = "")) p } #' Mosaic plot #' #' Plots the mosaic plot by using fluctuation. #' #' @param data data set using #' @param mapping aesthetics being used. Only x and y will used and both are required #' @param ... passed to \code{\link[ggplot2]{geom_tile}(...)} #' @param floor don't display cells smaller than this value #' @param ceiling max value to scale frequencies. If any frequency is larger than the ceiling, the fill color is displayed darker than other rectangles #' @author Barret Schloerke #' @keywords hplot #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' p_(ggally_ratio(tips, ggplot2::aes(sex, day))) #' p_(ggally_ratio(tips, ggplot2::aes(sex, day)) + ggplot2::coord_equal()) #' # only plot tiles greater or equal to 20 and scale to a max of 50 #' p_(ggally_ratio( #' tips, ggplot2::aes(sex, day), #' floor = 20, ceiling = 50 #' ) + ggplot2::theme(aspect.ratio = 4 / 2)) #' @importFrom dplyr all_of arrange n pick summarise ggally_ratio <- function( data, mapping = ggplot2::aes( !!!stats::setNames(lapply(colnames(data)[1:2], as.name), c("x", "y")) ), ..., floor = 0, ceiling = NULL ) { # capture the original names xName <- mapping_string(mapping$x) yName <- mapping_string(mapping$y) countData <- dplyr::count( data, xvar = .data[[xName]], yvar = .data[[yName]], name = "freq" ) |> rename( x = "xvar", y = "yvar" ) xNames <- levels(countData[["x"]]) yNames <- levels(countData[["y"]]) countData <- countData[!is.na(countData$freq) & countData$freq >= floor, ] ceiling <- ceiling %||% max(countData$freq) countData[["freqSize"]] <- sqrt(pmin(countData[["freq"]], ceiling) / ceiling) countData[["col"]] <- ifelse( countData[["freq"]] > ceiling, "grey30", "grey50" ) countData[["xPos"]] <- as.numeric(countData[["x"]]) + (1 / 2) * countData[["freqSize"]] countData[["yPos"]] <- as.numeric(countData[["y"]]) + (1 / 2) * countData[["freqSize"]] p <- ggplot( data = countData, mapping = aes( x = .data$xPos, y = .data$yPos, height = .data$freqSize, width = .data$freqSize, fill = .data$col ) ) + geom_tile(...) + scale_fill_identity() + scale_x_continuous( name = xName, limits = c(0.9999, length(xNames) + 1), breaks = 1:(length(xNames) + 1), labels = c(xNames, ""), minor_breaks = FALSE ) + scale_y_continuous( name = yName, limits = c(0.9999, length(yNames) + 1), breaks = 1:(length(yNames) + 1), labels = c(yNames, ""), minor_breaks = FALSE ) + theme( axis.text.x = element_text( hjust = 0, vjust = 1, colour = "grey50" ), axis.text.y = element_text( hjust = 0, vjust = 0, angle = 90, colour = "grey50" ) ) p } #' Display counts of observations #' #' Plot the number of observations by using rectangles #' with proportional areas. #' #' @param data data set using #' @param mapping aesthetics being used #' @param ... other arguments passed to \code{\link[ggplot2]{geom_tile}(...)} #' @details #' You can adjust the size of rectangles with the \code{x.width} argument. #' @author Joseph Larmarange #' @keywords hplot #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' p_(ggally_count(tips, mapping = ggplot2::aes(x = smoker, y = sex))) #' p_(ggally_count(tips, mapping = ggplot2::aes(x = smoker, y = sex, fill = day))) #' #' p_(ggally_count( #' as.data.frame(Titanic), #' mapping = ggplot2::aes(x = Class, y = Survived, weight = Freq) #' )) #' p_(ggally_count( #' as.data.frame(Titanic), #' mapping = ggplot2::aes(x = Class, y = Survived, weight = Freq), #' x.width = 0.5 #' )) ggally_count <- function(data, mapping, ...) { mapping <- mapping_color_to_fill(mapping) if (is.null(mapping$x)) { cli::cli_abort("{.field x} aesthetic is required.") } if (is.null(mapping$y)) { cli::cli_abort("{.field y} aesthetic is required.") } # for stat_ggally_count(), y should be mapped to base_y # and always be a factor count_col <- ".ggally_y" data[[count_col]] <- as.factor(eval_data_col(data, mapping$y)) # Reverse the y axis here. I'd like to perform this in the # `scale_y_continuous(trans="reverse")`, but the trans is applied after # `breaks/labels` data[[count_col]] <- factor( data[[count_col]], levels = rev(levels(data[[count_col]])) ) ylabel <- mapping_string(mapping$y) mapping$base_y <- aes(base_y = !!as.name(count_col))$base_y mapping$y <- NULL # default values args <- list(...) if (!"fill" %in% names(args)) { if (is.null(mapping$fill)) { args$fill <- get_geom_defaults(GeomRect)$fill } } ggplot(data, mapping) + do.call(stat_ggally_count, args) + scale_y_continuous( breaks = seq_along(levels(data[[count_col]])), labels = levels(data[[count_col]]) ) + theme(panel.grid.minor = element_blank()) + ylab(ylabel) } #' @export #' @rdname ggally_count #' @format NULL #' @usage NULL #' @export # na.rm = TRUE to remove warnings if NA (cf. stat_count) # x.width to control size of tiles stat_ggally_count <- function( mapping = NULL, data = NULL, geom = "tile", position = "identity", ..., x.width = .9, na.rm = FALSE, show.legend = NA, inherit.aes = TRUE ) { params <- list( x.width = x.width, na.rm = na.rm, ... ) if (!is.null(params$y)) { cli::cli_abort( "{.fn stat_ggally_count} must not be used with a {.field y} aesthetic, but with a {.field base_y} aesthetic instead." ) } layer( data = data, mapping = mapping, stat = StatGGallyCount, geom = geom, position = position, show.legend = show.legend, inherit.aes = inherit.aes, params = params ) } #' @rdname ggally_count #' @format NULL #' @usage NULL #' @export StatGGallyCount <- ggproto( "StatGGallyCount", Stat, required_aes = c("x", "base_y"), default_aes = aes( weight = 1, width = after_stat(width), height = after_stat(height), y = after_stat(y) ), setup_params = function(data, params) { params }, extra_params = c("na.rm"), compute_panel = function(self, data, scales, x.width = NULL) { if (is.null(data$weight)) { data$weight <- rep(1, nrow(data)) } if (is.null(x.width)) { x.width <- .9 } # sum weights for each combination of aesthetics # the use of . allows to consider all aesthetics defined in data panel <- stats::aggregate(weight ~ ., data = data, sum, na.rm = TRUE) names(panel)[which(names(panel) == "weight")] <- "n" # Reverse both the y and fill values here. # This makes the colors appear the correct order # If it is a single color, it won't make any difference in the cum_height panel <- panel[rev(seq_len(nrow(panel))), ] # compute proportions by x and y f <- function(n) { sum(abs(n), na.rm = TRUE) } panel$n_xy <- stats::ave(panel$n, panel$x, panel$base_y, FUN = f) panel$prop <- panel$n / panel$n_xy panel$width <- sqrt(panel$n_xy) / max(sqrt(panel$n_xy)) * x.width panel$height <- panel$width * panel$prop panel$cum_height <- stats::ave( panel$height, panel$x, panel$base_y, FUN = cumsum ) panel$y <- as.numeric(panel$base_y) + panel$cum_height - panel$height / 2 - panel$width / 2 panel } ) #' @rdname ggally_count #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' p_(ggally_countDiag(tips, mapping = ggplot2::aes(x = smoker))) #' p_(ggally_countDiag(tips, mapping = ggplot2::aes(x = smoker, fill = sex))) ggally_countDiag <- function(data, mapping, ...) { mapping$y <- mapping$x ggally_count(data = data, mapping = mapping, ...) } #' Blank plot #' #' Draws nothing. #' #' Makes a "blank" ggplot object that will only draw white space #' #' @author Barret Schloerke #' @param ... other arguments ignored #' @seealso [ggplot2::element_blank()] #' @export #' @keywords hplot ggally_blank <- function(...) { aes(...) # ignored a <- data.frame(X = 1:2, Y = 1:2) p <- ggplot(data = a, aes(x = !!as.name("X"), y = !!as.name("Y"))) + geom_point(colour = "transparent") + theme( axis.line = element_blank(), axis.text.x = element_blank(), axis.text.y = element_blank(), axis.ticks = element_blank(), axis.title.x = element_blank(), axis.title.y = element_blank(), legend.background = element_blank(), legend.key = element_blank(), legend.text = element_blank(), legend.title = element_blank(), panel.background = element_blank(), panel.border = element_blank(), panel.grid.major = element_blank(), panel.grid.minor = element_blank(), plot.background = element_blank(), plot.title = element_blank(), strip.background = element_blank(), strip.text.x = element_blank(), strip.text.y = element_blank() ) class(p) <- c(class(p), "ggmatrix_blank") p } #' @rdname ggally_blank #' @export ggally_blankDiag <- function(...) { ggally_blank(...) } #' NA plot #' #' Draws a large \code{NA} in the middle of the plotting area. This plot is useful when all X or Y data is \code{NA} #' #' @author Barret Schloerke #' @param data ignored #' @param mapping ignored #' @param size size of the geom_text 'NA' #' @param color color of the geom_text 'NA' #' @param ... other arguments sent to geom_text #' @export #' @keywords hplot ggally_na <- function( data = NULL, mapping = NULL, size = 10, color = "grey20", ... ) { a <- data.frame(x = 1, y = 1, label = "NA") p <- ggplot( data = a, aes(x = !!as.name("X"), y = !!as.name("Y"), label = !!as.name("label")) ) + geom_text(color = color, size = size, ...) + theme( axis.line = element_blank(), axis.text.x = element_blank(), axis.text.y = element_blank(), axis.ticks = element_blank(), axis.title.x = element_blank(), axis.title.y = element_blank(), legend.background = element_blank(), legend.key = element_blank(), legend.text = element_blank(), legend.title = element_blank(), panel.background = element_blank(), panel.border = element_blank(), panel.grid.major = element_blank(), panel.grid.minor = element_blank(), plot.background = element_blank(), plot.title = element_blank(), strip.background = element_blank(), strip.text.x = element_blank(), strip.text.y = element_blank() ) p } #' @rdname ggally_na #' @export ggally_naDiag <- function(...) { ggally_na(...) } #' Scatterplot for continuous and categorical variables #' #' Make scatterplots compatible with both continuous and categorical variables #' using \code{\link[ggforce]{geom_autopoint}} from package \pkg{ggforce}. #' #' @param data data set using #' @param mapping aesthetics being used #' @param ... other arguments passed to \code{\link[ggforce]{geom_autopoint}(...)} #' @author Joseph Larmarange #' @keywords hplot #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' p_(ggally_autopoint(tips, mapping = aes(x = tip, y = total_bill))) #' p_(ggally_autopoint(tips, mapping = aes(x = tip, y = sex))) #' p_(ggally_autopoint(tips, mapping = aes(x = smoker, y = sex))) #' p_(ggally_autopoint(tips, mapping = aes(x = smoker, y = sex, color = day))) #' p_(ggally_autopoint(tips, mapping = aes(x = smoker, y = sex), size = 8)) #' p_(ggally_autopoint(tips, mapping = aes(x = smoker, y = sex), alpha = .9)) #' #' p_(ggpairs( #' tips, #' mapping = aes(colour = sex), #' upper = list(discrete = "autopoint", combo = "autopoint", continuous = "autopoint"), #' diag = list(discrete = "autopointDiag", continuous = "autopointDiag") #' )) ggally_autopoint <- function(data, mapping, ...) { rlang::check_installed("ggforce") args <- list(...) if (!"alpha" %in% names(args) && is.null(mapping$alpha)) { args$alpha <- .5 } # mapping needs to be sent directly to geom_autopoint args$mapping <- mapping ggplot(data, mapping) + do.call(ggforce::geom_autopoint, args) } #' @rdname ggally_autopoint #' @export ggally_autopointDiag <- function(data, mapping, ...) { mapping$y <- mapping$x ggally_autopoint(data = data, mapping = mapping, ...) } #' Summarize a continuous variable by each value of a discrete variable #' #' Display summary statistics of a continuous variable for each value of a discrete variable. #' #' @param data data set using #' @param mapping aesthetics being used #' @param text_fn function that takes an x and weights and returns a text string #' @param text_fn_vertical function that takes an x and weights and returns a text string, used when \code{x} is discrete and \code{y} is continuous. If not provided, will use \code{text_fn}, replacing spaces by carriage returns. #' @param ... other arguments passed to \code{\link[ggplot2]{geom_text}(...)} #' @author Joseph Larmarange #' @keywords hplot #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' if (require(Hmisc)) { #' data(tips) #' p_(ggally_summarise_by(tips, mapping = aes(x = total_bill, y = day))) #' p_(ggally_summarise_by(tips, mapping = aes(x = day, y = total_bill))) #' #' # colour is kept only if equal to the discrete variable #' p_(ggally_summarise_by(tips, mapping = aes(x = total_bill, y = day, color = day))) #' p_(ggally_summarise_by(tips, mapping = aes(x = total_bill, y = day, color = sex))) #' p_(ggally_summarise_by(tips, mapping = aes(x = day, y = total_bill, color = day))) #' #' # custom text size #' p_(ggally_summarise_by(tips, mapping = aes(x = total_bill, y = day), size = 6)) #' #' # change statistic to display #' p_(ggally_summarise_by(tips, mapping = aes(x = total_bill, y = day), text_fn = weighted_mean_sd)) #' #' # custom stat function #' weighted_sum <- function(x, weights = NULL) { #' if (is.null(weights)) weights <- 1 #' paste0("Total : ", round(sum(x * weights, na.rm = TRUE), digits = 1)) #' } #' p_(ggally_summarise_by(tips, mapping = aes(x = total_bill, y = day), text_fn = weighted_sum)) #' } #' @importFrom dplyr arrange summarise ggally_summarise_by <- function( data, mapping, text_fn = weighted_median_iqr, text_fn_vertical = NULL, ... ) { if (is.null(mapping$x)) { cli::cli_abort("{.field x} aesthetic is required.") } if (is.null(mapping$y)) { cli::cli_abort("{.field y} aesthetic is required.") } horizontal <- is_horizontal(data, mapping) if (horizontal) { res <- data.frame( x = eval_data_col(data, mapping$x), y = eval_data_col(data, mapping$y), weight = eval_data_col(data, mapping$weight) %||% 1, stringsAsFactors = FALSE ) |> summarise(label = text_fn(.data$x, .data$weight), .by = "y") |> arrange(.data$y) # keep colour if matching the discrete variable if (mapping_string(mapping$colour) == mapping_string(mapping$y)) { col <- as.name("y") } else { col <- NULL } ggplot(res) + aes(y = .data$y, x = 1, label = .data$label, colour = !!col) + geom_text(...) + xlab("") + ylab(mapping_string(mapping$y)) + # theme_minimal() + theme( panel.grid.major = element_blank(), panel.grid.minor = element_blank(), axis.ticks.x = element_blank(), axis.text.x = element_blank(), legend.position = "none", panel.background = element_blank(), panel.border = element_rect( linetype = "solid", color = theme_get()$panel.background$fill, fill = "transparent" ) ) } else { if (is.null(text_fn_vertical)) { text_fn_vertical <- function(x, weights) { gsub(" ", "\n", text_fn(x, weights)) } } ggally_summarise_by( data, mapping_swap_x_y(mapping), text_fn_vertical, ... ) + coord_flip() + theme( axis.ticks.y = element_blank(), axis.text.y = element_blank(), axis.text.x = theme_get()$axis.text, axis.ticks.x = theme_get()$axis.ticks ) + theme(axis.text.x = element_text(size = 9)) } } #' @rdname ggally_summarise_by #' @param x a numeric vector #' @param weights an optional numeric vectors of weights. If \code{NULL}, equal weights of 1 will be taken into account. #' @details #' \code{weighted_median_iqr} computes weighted median and interquartile range. #' @export weighted_median_iqr <- function(x, weights = NULL) { rlang::check_installed("Hmisc") s <- round( Hmisc::wtd.quantile( x, weights = weights, probs = c(.25, .5, .75), na.rm = TRUE ), digits = 1 ) paste0("Median: ", s[2], " [", s[1], "-", s[3], "]") } #' @rdname ggally_summarise_by #' @details #' \code{weighted_mean_sd} computes weighted mean and standard deviation. #' @export weighted_mean_sd <- function(x, weights = NULL) { rlang::check_installed("Hmisc") m <- round(Hmisc::wtd.mean(x, weights = weights, na.rm = TRUE), digits = 1) sd <- round( sqrt(Hmisc::wtd.var(x, weights = weights, na.rm = TRUE)), digits = 1 ) paste0("Mean: ", m, " (", sd, ")") } GGally/R/deprecated.R0000644000176200001440000002276315047655266014107 0ustar liggesusers#' Modify a \code{\link{ggmatrix}} object by adding an \pkg{ggplot2} object to all #' @description #' `r lifecycle::badge("deprecated")` #' #' This function allows cleaner axis labels for your plots, but is deprecated. #' You can achieve the same effect by specifying strip's background and placement #' properties (see Examples). #' #' @keywords internal #' #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' # Cleaner axis labels with v1_ggmatrix_theme #' p_(ggpairs(iris, 1:2) + v1_ggmatrix_theme()) #' #' # Move the column names to the left and bottom #' p_(ggpairs(iris, 1:2, switch = "both") + v1_ggmatrix_theme()) #' #' # Manually specifying axis labels properties #' p_( #' ggpairs(iris, 1:2) + #' theme( #' strip.background = element_rect(fill = "white"), #' strip.placement = "outside" #' ) #') #' #' # This way you have even more control over how the final plot looks. #' # For example, if you want to set the background color to yellow: #' p_( #' ggpairs(iris, 1:2) + #' theme( #' strip.background = element_rect(fill = "yellow"), #' strip.placement = "outside" #' ) #') v1_ggmatrix_theme <- function() { lifecycle::deprecate_soft( when = "2.3.0", what = "v1_ggmatrix_theme()", details = "This function will be removed in future releases." ) theme( strip.background = element_rect(fill = "white"), strip.placement = "outside" ) } #' Correlation value plot #' #' @description #' `r lifecycle::badge("deprecated")` #' #' Estimate correlation from the given data. #' #' This function is deprecated and will be removed in future releases. #' #' See \code{\link{ggally_cor}}. #' #' @param data data set using #' @param mapping aesthetics being used #' @param alignPercent right align position of numbers. Default is 60 percent across the horizontal #' @param method \code{method} supplied to cor function #' @param use \code{use} supplied to cor function #' @param corAlignPercent deprecated. Use parameter \code{alignPercent} #' @param corMethod deprecated. Use parameter \code{method} #' @param corUse deprecated. Use parameter \code{use} #' @param displayGrid if TRUE, display aligned panel gridlines #' @param ... other arguments being supplied to geom_text #' @author Barret Schloerke #' @importFrom dplyr arrange mutate summarise #' @importFrom stats complete.cases cor #' @seealso \code{\link{ggally_cor}} #' @export #' @keywords internal #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' p_(ggally_cor_v1_5(tips, mapping = ggplot2::aes(total_bill, tip))) #' #' # display with no grid #' p_(ggally_cor_v1_5( #' tips, #' mapping = ggplot2::aes(total_bill, tip), #' displayGrid = FALSE #' )) #' #' # change text attributes #' p_(ggally_cor_v1_5( #' tips, #' mapping = ggplot2::aes(x = total_bill, y = tip), #' size = 15, #' colour = I("red") #' )) #' #' # split by a variable #' p_(ggally_cor_v1_5( #' tips, #' mapping = ggplot2::aes(total_bill, tip, color = sex), #' size = 5 #' )) ggally_cor_v1_5 <- function( data, mapping, alignPercent = 0.6, method = "pearson", use = "complete.obs", corAlignPercent = NULL, corMethod = NULL, corUse = NULL, displayGrid = TRUE, ... ) { lifecycle::deprecate_soft( when = "2.3.0", what = "ggally_cor_v1_5()", with = "ggally_cor()" ) if (!is.null(corAlignPercent)) { cli::cli_abort( "{.arg corAlignPercent} is deprecated. Please use argument {.arg alignPercent}." ) } if (!is.null(corMethod)) { cli::cli_abort( "{.arg corMethod} is deprecated. Please use argument {.arg method}." ) } if (!is.null(corUse)) { cli::cli_abort( "{.arg corUse} is deprecated. Please use argument {.arg use}." ) } useOptions <- c( "all.obs", "complete.obs", "pairwise.complete.obs", "everything", "na.or.complete" ) use <- pmatch(use, useOptions) if (is.na(use)) { cli::cli_warn( "correlation {.arg use} not found. Using default value of {.arg all.obs}" ) use <- useOptions[1] } else { use <- useOptions[use] } cor_fn <- function(x, y) { # also do summarise below if fn is altered cor(x, y, method = method, use = use) } # xVar <- data[[as.character(mapping$x)]] # yVar <- data[[as.character(mapping$y)]] # x_bad_rows <- is.na(xVar) # y_bad_rows <- is.na(yVar) # bad_rows <- x_bad_rows | y_bad_rows # if (any(bad_rows)) { # total <- sum(bad_rows) # if (total > 1) { # cli::cli_warn("Removed {.val {total}} rows containing missing values") # } else if (total == 1) { # cli::cli_warn("Removing 1 row that contained a missing value") # } # # xVar <- xVar[!bad_rows] # yVar <- yVar[!bad_rows] # } # mapping$x <- mapping$y <- NULL xData <- eval_data_col(data, mapping$x) yData <- eval_data_col(data, mapping$y) if (is_date(xData)) { xData <- as.numeric(xData) } if (is_date(yData)) { yData <- as.numeric(yData) } colorData <- eval_data_col(data, mapping$colour) if (is.numeric(colorData)) { cli::cli_abort( "{.fn ggally_cor}: mapping color column must be categorical, not numeric" ) } if (use %in% c("complete.obs", "pairwise.complete.obs", "na.or.complete")) { if (!is.null(colorData) && (length(colorData) == length(xData))) { rows <- complete.cases(xData, yData, colorData) } else { rows <- complete.cases(xData, yData) } if (any(!rows)) { total <- sum(!rows) if (total > 1) { cli::cli_warn("Removed {.val {total}} rows containing missing values") } else if (total == 1) { cli::cli_warn("Removing 1 row that contained a missing value") } } if (!is.null(colorData) && (length(colorData) == length(xData))) { colorData <- colorData[rows] } xData <- xData[rows] yData <- yData[rows] } xVal <- xData yVal <- yData # if the mapping has to deal with the data, remove it if (utils::packageVersion("ggplot2") > "2.2.1") { for (mappingName in names(mapping)) { itemData <- eval_data_col(data, mapping[[mappingName]]) if (!inherits(itemData, "AsIs")) { mapping[[mappingName]] <- NULL } } } else { if (length(names(mapping)) > 0) { for (i in length(names(mapping)):1) { # find the last value of the aes, such as cyl of as.factor(cyl) tmp_map_val <- deparse(mapping[names(mapping)[i]][[1]]) if (tmp_map_val[length(tmp_map_val)] %in% colnames(data)) { mapping[[names(mapping)[i]]] <- NULL } if (length(names(mapping)) < 1) { mapping <- NULL break } } } } if ( !is.null(colorData) && !inherits(colorData, "AsIs") ) { cord <- data.frame(x = xData, y = yData, color = colorData) |> summarise(correlation = cor_fn(.data$x, .data$y), .by = "color") |> arrange(.data$color) |> mutate(correlation = signif(as.numeric(.data$correlation), 3L)) # put in correct order lev <- levels(as.factor(colorData)) ord <- rep(-1, nrow(cord)) for (i in seq_len(nrow(cord))) { for (j in seq_along(lev)) { if (identical(as.character(cord$color[i]), as.character(lev[j]))) { ord[i] <- j } } } # print(order(ord[ord >= 0])) # print(lev) cord <- cord[order(ord[ord >= 0]), ] cord$label <- str_c(cord$color, ": ", cord$correlation) # calculate variable ranges so the gridlines line up xmin <- min(xVal, na.rm = TRUE) xmax <- max(xVal, na.rm = TRUE) xrange <- c(xmin - 0.01 * (xmax - xmin), xmax + 0.01 * (xmax - xmin)) ymin <- min(yVal, na.rm = TRUE) ymax <- max(yVal, na.rm = TRUE) yrange <- c(ymin - 0.01 * (ymax - ymin), ymax + 0.01 * (ymax - ymin)) # print(cord) p <- ggally_text( label = str_c("Corr: ", signif(cor_fn(xVal, yVal), 3)), mapping = mapping, xP = 0.5, yP = 0.9, xrange = xrange, yrange = yrange, ... ) xPos <- rep(alignPercent, nrow(cord)) * diff(xrange) + min(xrange, na.rm = TRUE) yPos <- seq( from = 0.9, to = 0.2, length.out = nrow(cord) + 1 ) yPos <- yPos * diff(yrange) + min(yrange, na.rm = TRUE) yPos <- yPos[-1] # print(range(yVal)) # print(yPos) cordf <- data.frame(xPos = xPos, yPos = yPos, labelp = cord$label) cordf$labelp <- factor(cordf$labelp, levels = cordf$labelp) # print(cordf) # print(str(cordf)) p <- p + geom_text( data = cordf, aes( x = .data$xPos, y = .data$yPos, label = .data$labelp, color = .data$labelp ), hjust = 1, ... ) } else { # calculate variable ranges so the gridlines line up xmin <- min(xVal, na.rm = TRUE) xmax <- max(xVal, na.rm = TRUE) xrange <- c(xmin - 0.01 * (xmax - xmin), xmax + 0.01 * (xmax - xmin)) ymin <- min(yVal, na.rm = TRUE) ymax <- max(yVal, na.rm = TRUE) yrange <- c(ymin - 0.01 * (ymax - ymin), ymax + 0.01 * (ymax - ymin)) p <- ggally_text( label = paste( "Corr:\n", signif( cor_fn(xVal, yVal), 3 ), sep = "", collapse = "" ), mapping, xP = 0.5, yP = 0.5, xrange = xrange, yrange = yrange, ... ) } if (!isTRUE(displayGrid)) { p <- p + theme( panel.grid.major = element_blank(), panel.grid.minor = element_blank() ) } p + theme(legend.position = "none") } GGally/R/ggaly_trends.R0000644000176200001440000001065515047655266014466 0ustar liggesusers#' Trends line plot #' #' Plot trends using line plots. #' For continuous y variables, plot the evolution of the mean. #' For binary y variables, plot the evolution of the proportion. #' #' @param data data set using #' @param mapping aesthetics being used #' @param ... other arguments passed to [ggplot2::geom_line()] #' @param include_zero Should 0 be included on the y-axis? #' @author Joseph Larmarange #' @keywords hplot #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' tips_f <- tips #' tips_f$day <- factor(tips$day, c("Thur", "Fri", "Sat", "Sun")) #' #' # Numeric variable #' p_(ggally_trends(tips_f, mapping = aes(x = day, y = total_bill))) #' p_(ggally_trends(tips_f, mapping = aes(x = day, y = total_bill, colour = time))) #' #' # Binary variable #' p_(ggally_trends(tips_f, mapping = aes(x = day, y = smoker))) #' p_(ggally_trends(tips_f, mapping = aes(x = day, y = smoker, colour = sex))) #' #' # Discrete variable with 3 or more categories #' p_(ggally_trends(tips_f, mapping = aes(x = smoker, y = day))) #' p_(ggally_trends(tips_f, mapping = aes(x = smoker, y = day, color = sex))) #' #' # Include zero on Y axis #' p_(ggally_trends(tips_f, mapping = aes(x = day, y = total_bill), include_zero = TRUE)) #' p_(ggally_trends(tips_f, mapping = aes(x = day, y = smoker), include_zero = TRUE)) #' #' # Change line size #' p_(ggally_trends(tips_f, mapping = aes(x = day, y = smoker, colour = sex), size = 3)) #' #' # Define weights with the appropriate aesthetic #' d <- as.data.frame(Titanic) #' p_(ggally_trends( #' d, #' mapping = aes(x = Class, y = Survived, weight = Freq, color = Sex), #' include_zero = TRUE #' )) ggally_trends <- function( data, mapping, ..., include_zero = FALSE ) { if (is.null(mapping$x)) { cli::cli_abort("{.field x} aesthetic is required.") } if (is.null(mapping$y)) { cli::cli_abort("{.field y} aesthetic is required.") } # computing group g <- list() if (!is.null(mapping$alpha)) { g <- append(g, list(eval_data_col(data, mapping$alpha))) } if (!is.null(mapping$colour)) { g <- append(g, list(eval_data_col(data, mapping$colour))) } if (!is.null(mapping$linetype)) { g <- append(g, list(eval_data_col(data, mapping$linetype))) } if (!is.null(mapping$size)) { g <- append(g, list(eval_data_col(data, mapping$size))) } if (length(g) == 0) { mapping$group <- aes(group = 1)$group } else { data$.group <- interaction(g) mapping$group <- aes(group = !!as.name(".group"))$group } # considering the different situations regarding y y <- eval_data_col(data, mapping$y) if (is.factor(y) || is.character(y) || is.logical(y)) { y <- as.factor(y) if (length(levels(y)) == 2) { # Binary variable data[[".ggally_y"]] <- as.integer(y == levels(y)[2]) mapping$y <- aes(y = !!as.name(".ggally_y"))$y p <- ggplot(data, mapping) + stat_weighted_mean(geom = "line", ...) + scale_y_continuous(labels = scales::label_percent()) + ylab("") } else { # 3 or more categories yname <- mapping_string(mapping$y) # we need to duplicate date for each level of y # and to map y to linetype d <- data.frame() for (l in levels(y)) { tmp <- data tmp[[".ggally_y"]] <- as.integer(y == l) tmp$y <- l d <- dplyr::bind_rows(d, tmp) } mapping$linetype <- aes(y = !!as.name("y"))$y mapping$y <- aes(y = !!as.name(".ggally_y"))$y # recomputing groups g <- list() if (!is.null(mapping$alpha)) { g <- append(g, list(eval_data_col(d, mapping$alpha))) } if (!is.null(mapping$colour)) { g <- append(g, list(eval_data_col(d, mapping$colour))) } if (!is.null(mapping$linetype)) { g <- append(g, list(eval_data_col(d, mapping$linetype))) } if (!is.null(mapping$size)) { g <- append(g, list(eval_data_col(d, mapping$size))) } d$.group <- interaction(g) mapping$group <- aes(group = !!as.name(".group"))$group p <- ggplot(d, mapping) + stat_weighted_mean(geom = "line", ...) + scale_y_continuous(labels = scales::label_percent()) + ylab("") + labs(linetype = yname) } } else { # Numeric variable p <- ggplot(data, mapping) + stat_weighted_mean(geom = "line", ...) } if (include_zero) { p <- p + expand_limits(y = 0) } p } GGally/R/ggbivariate.R0000644000176200001440000000717415047655266014272 0ustar liggesusers#' Display an outcome using several potential explanatory variables #' #' \code{ggbivariate} is a variant of \code{\link{ggduo}} for plotting #' an outcome variable with several potential explanatory variables. #' #' @param data dataset to be used, can have both categorical and #' numerical variables #' @param outcome name or position of the outcome variable (one variable only) #' @param explanatory names or positions of the explanatory variables (if \code{NULL}, #' will take all variables other than \code{outcome}) #' @param mapping additional aesthetic to be used, for example to indicate #' weights (see examples) #' @param types custom types of plots to use, see \code{\link{ggduo}} #' @param ... additional arguments passed to \code{\link{ggduo}} (see examples) #' @param rowbar_args additional arguments passed to \code{\link{ggally_rowbar}} #' (see examples) #' @author Joseph Larmarange #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' p_(ggbivariate(tips, "smoker", c("day", "time", "sex", "tip"))) #' #' # Personalize plot title and legend title #' p_(ggbivariate( #' tips, "smoker", c("day", "time", "sex", "tip"), #' title = "Custom title" #' ) + #' labs(fill = "Smoker ?")) #' #' # Customize fill colour scale #' p_(ggbivariate(tips, "smoker", c("day", "time", "sex", "tip")) + #' scale_fill_brewer(type = "qual")) #' #' # Customize labels #' p_(ggbivariate( #' tips, "smoker", c("day", "time", "sex", "tip"), #' rowbar_args = list( #' colour = "white", #' size = 4, #' fontface = "bold", #' label_format = scales::label_percent(accurary = 1) #' ) #' )) #' #' # Choose the sub-plot from which get legend #' p_(ggbivariate(tips, "smoker")) #' p_(ggbivariate(tips, "smoker", legend = 3)) #' #' # Use mapping to indicate weights #' d <- as.data.frame(Titanic) #' p_(ggbivariate(d, "Survived", mapping = aes(weight = Freq))) #' #' # outcome can be numerical #' p_(ggbivariate(tips, outcome = "tip", title = "tip")) ggbivariate <- function( data, outcome, explanatory = NULL, mapping = NULL, types = NULL, ..., rowbar_args = NULL ) { if (length(outcome) != 1) { cli::cli_abort("You should provide only one {.arg outcome}.") } if (is.numeric(outcome)) { outcome <- names(data)[outcome] } if (is.null(explanatory)) { explanatory <- names(data)[ !names(data) %in% c(outcome, mapping_string(mapping$weight)) ] } if (!is.numeric(data[[outcome]])) { # mapping outcome to colour mapping$colour <- aes(colour = !!as.name(outcome))$colour } # default behavior if (is.null(rowbar_args$remove_percentage_axis)) { rowbar_args$remove_percentage_axis <- TRUE } if (is.null(rowbar_args$remove_background)) { rowbar_args$remove_background <- TRUE } if (is.null(types$discrete)) { types$discrete <- wrapp(ggally_rowbar, rowbar_args) } if (is.null(types$comboVertical)) { types$comboVertical <- "box_no_facet" } if (is.null(types$continuous)) { types$continuous <- "smooth_lm" } if (is.null(types$comboHorizontal)) { types$comboHorizontal <- "box_no_facet" } ggduo_args <- list(...) ggduo_args$data <- data ggduo_args$mapping <- mapping ggduo_args$types <- types ggduo_args$columnsX <- outcome ggduo_args$columnsY <- explanatory if (!"yProportions" %in% names(ggduo_args)) { ggduo_args$yProportions <- "auto" } if (!is.numeric(data[[outcome]]) && !"legend" %in% names(list(...))) { ggduo_args$legend <- 1 } p <- do.call(ggduo, ggduo_args) + theme( legend.position = "top", strip.text.x = element_blank() ) p } GGally/R/ggscatmat.R0000644000176200001440000003474415047655266013763 0ustar liggesusers#' lowertriangle - rearrange dataset as the preparation of \code{\link{ggscatmat}} function #' #' function for making the melted dataset used to plot the lowertriangle scatterplots. #' #' @export #' @param data a data matrix. Should contain numerical (continuous) data. #' @param columns an option to choose the column to be used in the raw dataset. Defaults to \code{1:ncol(data)} #' @param color an option to choose a factor variable to be grouped with. Defaults to \code{(NULL)} #' @author Mengjia Ni, Di Cook #' @examples #' data(flea) #' head(lowertriangle(flea, columns = 2:4)) #' head(lowertriangle(flea)) #' head(lowertriangle(flea, color = "species")) lowertriangle <- function(data, columns = 1:ncol(data), color = NULL) { # why do we need to ocheck this again? # data <- upgrade_scatmat_data(data) data.choose <- data[columns] dn <- data.choose[sapply(data.choose, is.numeric)] factor <- data[sapply(data, is.factor)] p <- ncol(dn) q <- nrow(dn) newdata <- as.data.frame( matrix(NA, nrow = q * p * p, ncol = 6 + ncol(factor)), stringsAsFactors = FALSE ) newdata[5:6] <- as.data.frame( matrix("", nrow = q * p * p, ncol = 2), stringsAsFactors = FALSE ) r <- 1 for (i in 1:p) { for (j in 1:p) { newdata[r:(r + q - 1), 1:6] <- cbind( dn[[i]], dn[[j]], i, j, colnames(dn)[i], colnames(dn)[j] ) r <- r + q } } if (ncol(newdata) > 6) { newdata[7:ncol(newdata)] <- factor } colnames(newdata) <- c( "xvalue", "yvalue", "xslot", "yslot", "xlab", "ylab", colnames(factor) ) rp <- data.frame(newdata) rp$xvalue <- suppressWarnings(as.numeric(as.character(rp$xvalue))) rp$yvalue <- suppressWarnings(as.numeric(as.character(rp$yvalue))) rp$xslot <- suppressWarnings(as.numeric(as.character(rp$xslot))) rp$yslot <- suppressWarnings(as.numeric(as.character(rp$yslot))) rp$xlab <- factor(rp$xlab, levels = unique(rp$xlab)) rp$ylab <- factor(rp$ylab, levels = unique(rp$ylab)) rp[[2]][rp[[3]] >= rp[[4]]] <- NA rp[[1]][rp[[3]] > rp[[4]]] <- NA if (is.null(color)) { rp.new <- rp[1:6] } else { colorcolumn <- rp[[which(colnames(rp) == color)]] rp.new <- cbind(rp[1:6], colorcolumn) } return(rp.new) } #' Rearrange dataset as the preparation of \code{\link{ggscatmat}} function #' #' Function for making the dataset used to plot the uppertriangle plots. #' #' @export #' @param data a data matrix. Should contain numerical (continuous) data. #' @param columns an option to choose the column to be used in the raw dataset. Defaults to \code{1:ncol(data)} #' @param color an option to choose a factor variable to be grouped with. Defaults to \code{(NULL)} #' @param corMethod method argument supplied to \code{\link[stats]{cor}} #' @author Mengjia Ni, Di Cook #' @importFrom stats cor #' @importFrom dplyr group_by summarise #' @examples #' data(flea) #' head(uppertriangle(flea, columns = 2:4)) #' head(uppertriangle(flea)) #' head(uppertriangle(flea, color = "species")) uppertriangle <- function( data, columns = 1:ncol(data), color = NULL, corMethod = "pearson" ) { # data <- upgrade_scatmat_data(data) data.choose <- data[columns] # why do we need to check this again? dn <- data.choose[sapply(data.choose, is.numeric)] factor <- data[sapply(data, is.factor)] p <- ncol(dn) newdata <- NULL for (i in 1:p) { for (j in 1:p) { newdata <- rbind( newdata, cbind( dn[, i], dn[, j], i, j, colnames(dn)[i], colnames(dn)[j], min(dn[, i]) + 0.5 * (max(dn[, i]) - min(dn[, i])), min(dn[, j]) + 0.5 * (max(dn[, j]) - min(dn[, j])), factor ) ) } } colnames(newdata) <- c( "xvalue", "yvalue", "xslot", "yslot", "xlab", "ylab", "xcenter", "ycenter", colnames(factor) ) rp <- data.frame(newdata, stringsAsFactors = TRUE) rp$xvalue <- suppressWarnings(as.numeric(as.character(rp$xvalue))) rp$yvalue <- suppressWarnings(as.numeric(as.character(rp$yvalue))) rp[[2]][rp[[3]] <= rp[[4]]] <- NA rp[[1]][rp[[3]] < rp[[4]]] <- NA if (is.null(color)) { rp.new <- rp[1:8] } else { colorcolumn <- rp[[which(colnames(rp) == color)]] rp.new <- cbind(rp[1:8], colorcolumn) } b <- rp.new[!is.na(rp.new$xvalue) & !is.na(rp.new$yvalue), ] b$xlab <- factor(b$xlab, levels = unique(b$xlab)) b$ylab <- factor(b$ylab, levels = unique(b$ylab)) if (is.null(color)) { data.cor <- b |> dplyr::group_by(xlab, ylab) |> dplyr::summarise( r = cor( .data$xvalue, .data$yvalue, use = "pairwise.complete.obs", method = "pearson" ), xvalue = min(.data$xvalue) + 0.5 * (max(.data$xvalue) - min(.data$xvalue)), yvalue = min(.data$yvalue) + 0.5 * (max(.data$yvalue) - min(.data$yvalue)) ) if (identical(corMethod, "rsquare")) { data.cor$r <- data.cor$r^2 } data.cor$r <- paste(round(data.cor$r, digits = 2)) # data.cor <- ddply( # b, .(xlab, ylab), # function(subsetDt) { # xlab <- subsetDt$xlab # ylab <- subsetDt$ylab # xvalue <- subsetDt$xvalue # yvalue <- subsetDt$yvalue # if (identical(corMethod, "rsquare")) { # r <- cor( # xvalue, yvalue, # use = "pairwise.complete.obs", # method = "pearson" # ) # r <- r ^ 2 # } else { # r <- cor( # xvalue, yvalue, # use = "pairwise.complete.obs", # method = corMethod # ) # } # r <- paste(round(r, digits = 2)) # # data.frame( # xlab = unique(xlab), ylab = unique(ylab), # r = r, # xvalue = min(xvalue) + 0.5 * (max(xvalue) - min(xvalue)), # yvalue = min(yvalue) + 0.5 * (max(yvalue) - min(yvalue)) # ) # } # ) return(data.cor) } else { c <- b data.cor1 <- c |> dplyr::group_by(xlab, ylab, colorcolumn) |> dplyr::summarise( r = cor( .data$xvalue, .data$yvalue, use = "pairwise.complete.obs", method = "pearson" ) ) if (identical(corMethod, "rsquare")) { data.cor1$r <- data.cor1$r^2 } data.cor1$r <- paste(round(data.cor1$r, digits = 2)) # data.cor1 <- ddply( # c, .(ylab, xlab, colorcolumn), # function(subsetDt) { # xlab <- subsetDt$xlab # ylab <- subsetDt$ylab # colorcolumn <- subsetDt$colorcolumn # xvalue <- subsetDt$xvalue # yvalue <- subsetDt$yvalue # if (identical(corMethod, "rsquare")) { # r <- cor( # xvalue, yvalue, # use = "pairwise.complete.obs", # method = "pearson" # ) # r <- r ^ 2 # } else { # r <- cor( # xvalue, yvalue, # use = "pairwise.complete.obs", # method = corMethod # ) # } # r <- paste(round(r, digits = 2)) # data.frame( # ylab = unique(ylab), xlab = unique(xlab), colorcolumn = unique(colorcolumn), # r = r # ) # } # ) n <- nrow(data.frame(unique(b$colorcolumn))) position <- b |> dplyr::group_by(xlab, ylab) |> dplyr::summarise( xvalue = min(.data$xvalue) + 0.5 * (max(.data$xvalue) - min(.data$xvalue)), ymin = min(.data$yvalue), ymax = max(.data$yvalue), range = max(.data$yvalue) - min(.data$yvalue) ) # position <- ddply(b, .(ylab, xlab), summarise, # xvalue = min(xvalue) + 0.5 * (max(xvalue) - min(xvalue)), # ymin = min(yvalue), # ymax = max(yvalue), # range = max(yvalue) - min(yvalue)) df <- data.frame() for (i in 1:nrow(position)) { for (j in 1:n) { row <- position[i, ] df <- rbind(df, cbind(row[, 3], (row[, 4] + row[, 6] * j / (n + 1)))) } } data.cor <- cbind(data.cor1, df) colnames(data.cor) <- c( "xlab", "ylab", "colorcolumn", "r", "xvalue", "yvalue" ) return(data.cor) } } #' Plots the lowertriangle and density plots of the scatter plot matrix. #' #' Function for making scatterplots in the lower triangle and diagonal density plots. #' #' @export #' @param data a data matrix. Should contain numerical (continuous) data. #' @param columns an option to choose the column to be used in the raw dataset. Defaults to \code{1:ncol(data)} #' @param color an option to group the dataset by the factor variable and color them by different colors. Defaults to \code{NULL} #' @param alpha an option to set the transparency in scatterplots for large data. Defaults to \code{1}. #' @author Mengjia Ni, Di Cook #' @examples #' # small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(flea) #' #' p_(scatmat(flea, columns = 2:4)) #' p_(scatmat(flea, columns = 2:4, color = "species")) scatmat <- function(data, columns = 1:ncol(data), color = NULL, alpha = 1) { # data <- upgrade_scatmat_data(data) data.choose <- data[columns] dn <- data.choose[sapply(data.choose, is.numeric)] if (ncol(dn) == 0) { cli::cli_abort( "All of your variables are factors. Need numeric variables to make scatterplot matrix." ) } ltdata.new <- lowertriangle(data, columns = columns, color = color) ## set up the plot r <- ggplot( ltdata.new, mapping = aes(x = !!as.name("xvalue"), y = !!as.name("yvalue")) ) + theme( axis.title.x = element_blank(), axis.title.y = element_blank() ) + facet_grid(ylab ~ xlab, scales = "free") + theme(aspect.ratio = 1) if (is.null(color)) { ## b/w version densities <- do.call( "rbind", lapply(1:ncol(dn), function(i) { data.frame( xlab = names(dn)[i], ylab = names(dn)[i], x = dn[, i], stringsAsFactors = TRUE ) }) ) for (m in 1:ncol(dn)) { j <- subset(densities, xlab == names(dn)[m]) r <- r + stat_density( aes( x = .data$x, y = after_stat(.data$scaled) * diff(range(.data$x)) + min(.data$x) ), data = j, position = "identity", geom = "line", color = "black" ) } ## add b/w points r <- r + geom_point(alpha = alpha, na.rm = TRUE) return(r) } else { ## do the colored version densities <- do.call( "rbind", lapply(1:ncol(dn), function(i) { data.frame( xlab = names(dn)[i], ylab = names(dn)[i], x = dn[, i], colorcolumn = data[, which(colnames(data) == color)], stringsAsFactors = TRUE ) }) ) for (m in 1:ncol(dn)) { j <- subset(densities, xlab == names(dn)[m]) r <- r + # r is the facet grid plot stat_density( aes( x = .data$x, y = after_stat(.data$scaled) * diff(range(.data$x)) + min(.data$x), colour = .data$colorcolumn ), data = j, position = "identity", geom = "line" ) } ## add color points r <- r + geom_point( data = ltdata.new, aes(colour = .data$colorcolumn), alpha = alpha, na.rm = TRUE ) return(r) } } #' Traditional scatterplot matrix for purely quantitative variables #' #' This function makes a scatterplot matrix for quantitative variables with density plots on the diagonal #' and correlation printed in the upper triangle. #' #' @export #' @param data a data matrix. Should contain numerical (continuous) data. #' @param columns an option to choose the column to be used in the raw dataset. Defaults to \code{1:ncol(data)}. #' @param color an option to group the dataset by the factor variable and color them by different colors. #' Defaults to \code{NULL}, i.e. no coloring. If supplied, it will be converted to a factor. #' @param alpha an option to set the transparency in scatterplots for large data. Defaults to \code{1}. #' @param corMethod method argument supplied to \code{\link[stats]{cor}} #' @author Mengjia Ni, Di Cook #' @examples #' # small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(flea) #' #' p_(ggscatmat(flea, columns = 2:4)) #' p_(ggscatmat(flea, columns = 2:4, color = "species")) ggscatmat <- function( data, columns = 1:ncol(data), color = NULL, alpha = 1, corMethod = "pearson" ) { ## if 'color' is not a factor, mold it into one if (!is.null(color)) { if (is.null(data[[color]])) { cli::cli_abort( "Non-existent column {.field color} requested: {.val {color}}" ) } data[[color]] <- as.factor(data[[color]]) } ## do we really need this next line? data <- upgrade_scatmat_data(data) data.choose <- data[columns] dn <- data.choose[sapply(data.choose, is.numeric)] if (ncol(dn) == 0) { cli::cli_abort( "All of your variables are factors. Need numeric variables to make scatter plot matrix." ) } if (ncol(dn) < 2) { cli::cli_abort("Not enough numeric variables to make a scatter plot matrix") } a <- uppertriangle( data, columns = columns, color = color, corMethod = corMethod ) if (is.null(color)) { plot <- scatmat(data, columns = columns, alpha = alpha) + geom_text(data = a, aes(label = !!as.name("r")), colour = "black") } else { plot <- scatmat(data, columns = columns, color = color, alpha = alpha) + geom_text( data = a, aes(label = !!as.name("r"), color = !!as.name("colorcolumn")) ) + labs(color = color) } is.factor.or.character <- function(x) { is.factor(x) | is.character(x) } factor <- data.choose[sapply(data.choose, is.factor.or.character)] if (ncol(factor) == 0) { return(plot) } else { cli::cli_warn("Factor variables are omitted in plot") return(plot) } } upgrade_scatmat_data <- function(data) { data <- as.data.frame(data) dataIsCharacter <- sapply(data, is.factor) if (any(dataIsCharacter)) { dataCharacterColumns <- names(dataIsCharacter[dataIsCharacter]) for (dataCol in dataCharacterColumns) { data[[dataCol]] <- as.factor(data[[dataCol]]) } } data } GGally/R/find-combo.R0000644000176200001440000000616015023051677014003 0ustar liggesusers#' Plot Types #' #' Retrieves the type of plot that should be used for all combinations #' #' @param data data set to be used #' @author Barret Schloerke #' @keywords internal plot_types <- function(data, columnsX, columnsY, allowDiag = TRUE) { plotTypesX <- lapply(data[columnsX], plotting_data_type) plotTypesY <- lapply(data[columnsY], plotting_data_type) columnNamesX <- names(data)[columnsX] columnNamesY <- names(data)[columnsY] isNaData <- as.data.frame(is.na(data)) lenX <- length(plotTypesX) lenY <- length(plotTypesY) n <- lenX * lenY plotType <- character(n) xVar <- character(n) yVar <- character(n) posX <- integer(n) posY <- integer(n) # horizontal then vertical for (yI in seq_len(lenY)) { yColName <- columnNamesY[yI] for (xI in seq_len(lenX)) { xColName <- columnNamesX[xI] yVarVal <- ifelse(xColName == yColName && allowDiag, NA, yColName) pos <- (yI - 1) * lenX + xI plotType[pos] <- find_plot_type( xColName, yColName, plotTypesX[xI], plotTypesY[yI], isAllNa = all(isNaData[[xColName]] | isNaData[[yColName]]), allowDiag = allowDiag ) xVar[pos] <- xColName yVar[pos] <- yVarVal posX[pos] <- xI posY[pos] <- yI } } dataInfo <- data.frame( plotType = plotType, xVar = xVar, yVar = yVar, posX = posX, posY = posY, isVertical = NA, stringsAsFactors = FALSE ) isCombo <- dataInfo$plotType == "combo" if (any(isCombo)) { dataInfo$isVertical[isCombo] <- unlist(plotTypesX[xVar[isCombo]]) == "discrete" } dataInfo } #' Find plot types #' #' Retrieves the type of plot for the specific columns #' #' @param col1Name x column name #' @param col2Name y column name #' @param type1 x column type #' @param type2 y column type #' @param isAllNa is.na(data) #' @param allowDiag allow for diag values to be returned #' @author Barret Schloerke #' @keywords internal find_plot_type <- function( col1Name, col2Name, type1, type2, isAllNa, allowDiag ) { # diag calculations if (col1Name == col2Name && allowDiag) { if (type1 == "na") { return("na-diag") } else if (type1 == "continuous") { return("continuous-diag") } else { return("discrete-diag") } } if (type1 == "na" || type2 == "na") { return("na") } # cat(names(data)[col2Name],": ", type2,"\t",names(data)[col1Name],": ",type1,"\n") isCats <- c(type1, type2) %in% "discrete" if (any(isCats)) { if (all(isCats)) { return("discrete") } return("combo") } # check if any combo of the two columns is all na if (isAllNa) { return("na") } return("continuous") } #' Check if object is a date #' #' @keywords internal #' @param x vector is_date <- function(x) { inherits(x, c("POSIXt", "POSIXct", "POSIXlt", "Date")) } #' Get plotting data type #' #' @keywords internal #' @param x vector plotting_data_type <- function(x) { if (all(is.na(x))) { return("na") } if (is_date(x)) { "continuous" } else if (any(is.factor(x), is.character(x), is.logical(x))) { "discrete" } else { "continuous" } } GGally/R/data-flea.R0000644000176200001440000000165714526737221013615 0ustar liggesusers#' Historical data used for classification examples. #' #' This data contains physical measurements on three species of flea beetles. #' #' @details \itemize{ #' \item species Ch. concinna, Ch. heptapotamica, Ch. heikertingeri #' \item tars1 width of the first joint of the first tarsus in microns #' \item tars2 width of the second joint of the first tarsus in microns #' \item head the maximal width of the head between the external edges of the eyes in 0.01 mm #' \item aede1 the maximal width of the aedeagus in the fore-part in microns #' \item aede2 the front angle of the aedeagus (1 unit = 7.5 degrees) #' \item aede3 the aedeagus width from the side in microns #' } #' #' @docType data #' @keywords datasets #' @name flea #' @usage data(flea) #' @format A data frame with 74 rows and 7 variables #' @references #' Lubischew, A. A. (1962), On the Use of Discriminant Functions in #' Taxonomy, Biometrics 18:455-477. NULL GGally/R/gglyph.R0000644000176200001440000002176215047655266013277 0ustar liggesusers#' Create \code{\link{glyphplot}} data #' #' Create the data needed to generate a glyph plot. #' #' @param data A data frame containing variables named in \code{x_major}, #' \code{x_minor}, \code{y_major} and \code{y_minor}. #' @param x_major,x_minor,y_major,y_minor The name of the variable (as a #' string) for the major and minor x and y axes. Together, each unique # combination of \code{x_major} and \code{y_major} specifies a grid cell. #' @param polar A logical of length 1, specifying whether the glyphs should #' be drawn in polar coordinates. Defaults to \code{FALSE}. #' @param height,width The height and width of each glyph. Defaults to 95% of #' the \code{\link[ggplot2]{resolution}} of the data. Specify the width #' absolutely by supplying a numeric vector of length 1, or relative to the # resolution of the data by using \code{\link[ggplot2]{rel}}. #' @param y_scale,x_scale The scaling function to be applied to each set of #' minor values within a grid cell. Defaults to \code{\link{identity}} so #' that no scaling is performed. #' @export #' @author Di Cook, Heike Hofmann, Hadley Wickham #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(nasa) #' nasaLate <- nasa[ #' nasa$date >= as.POSIXct("1998-01-01") & #' nasa$lat >= 20 & #' nasa$lat <= 40 & #' nasa$long >= -80 & #' nasa$long <= -60, #' ] #' temp.gly <- glyphs(nasaLate, "long", "day", "lat", "surftemp", height = 2.5) #' p_(ggplot2::ggplot(temp.gly, ggplot2::aes(gx, gy, group = gid)) + #' add_ref_lines(temp.gly, color = "grey90") + #' add_ref_boxes(temp.gly, color = "grey90") + #' ggplot2::geom_path() + #' ggplot2::theme_bw() + #' ggplot2::labs(x = "", y = "")) #' @importFrom dplyr across arrange everything last_col summarise #' @importFrom rlang := sym glyphs <- function( data, x_major, x_minor, y_major, y_minor, polar = FALSE, height = ggplot2::rel(0.95), width = ggplot2::rel(0.95), y_scale = identity, x_scale = identity ) { data$gid <- interaction(data[[x_major]], data[[y_major]], drop = TRUE) if (inherits(width, "rel")) { width <- resolution(data[[x_major]], zero = FALSE) * unclass(width) cli::cli_inform("Using width {format(width, digits = 3)}") } if (inherits(height, "rel")) { height <- resolution(data[[y_major]], zero = FALSE) * unclass(height) cli::cli_inform("Using height {format(height, digits = 3)}") } if (!identical(x_scale, identity) || !identical(y_scale, identity)) { data <- data |> mutate( "{x_minor}" := x_scale(!!sym(x_minor)), "{y_minor}" := y_scale(!!sym(y_minor)), .by = "gid" ) } if (polar) { theta <- 2 * pi * rescale01(data[[x_minor]]) r <- rescale01(data[[y_minor]]) data$gx <- data[[x_major]] + width / 2 * r * sin(theta) data$gy <- data[[y_major]] + height / 2 * r * cos(theta) data <- data[order(data[[x_major]], data[[x_minor]]), ] } else { data$gx <- data[[x_major]] + rescale11(data[[x_minor]]) * width / 2 data$gy <- data[[y_major]] + rescale11(data[[y_minor]]) * height / 2 } structure( data, width = width, height = height, polar = polar, x_major = x_major, y_major = y_major, class = c("glyphplot", "data.frame") ) } # Create reference lines for a glyph plot #' @importFrom dplyr .data arrange summarise #' @noRd ref_lines <- function(data) { stopifnot(is.glyphplot(data)) glyph <- attributes(data) cells <- unique(data[c(glyph$x_major, glyph$y_major, "gid")]) if (glyph$polar) { ref_line <- function(df) { theta <- seq(0, 2 * pi, length.out = 30) data.frame( gid = df$gid, gx = df[[glyph$x_major]] + glyph$width / 4 * sin(theta), gy = df[[glyph$y_major]] + glyph$height / 4 * cos(theta) ) } } else { ref_line <- function(df) { data.frame( gid = df$gid, gx = df[[glyph$x_major]] + c(-1, 1) * glyph$width / 2, gy = df[[glyph$y_major]] ) } } cells |> reframe(ref_line(.data), .by = "gid") |> arrange(.data$gid) } # Create reference boxes for a glyph plot ref_boxes <- function(data, fill = NULL) { stopifnot(is.glyphplot(data)) glyph <- attributes(data) cells <- data.frame(unique(data[c( glyph$x_major, glyph$y_major, "gid", fill )])) df <- data.frame( xmin = cells[[glyph$x_major]] - glyph$width / 2, xmax = cells[[glyph$x_major]] + glyph$width / 2, ymin = cells[[glyph$y_major]] - glyph$height / 2, ymax = cells[[glyph$y_major]] + glyph$height / 2 ) if (!is.null(fill)) { df$fill <- cells[[fill]] } df } # Glyph plot class ----------------------------------------------------------- #' Glyph plot class #' #' @param data A data frame containing variables named in \code{x_major}, #' \code{x_minor}, \code{y_major} and \code{y_minor}. #' @param height,width The height and width of each glyph. Defaults to 95% of #' the \code{\link[ggplot2]{resolution}} of the data. Specify the width #' absolutely by supplying a numeric vector of length 1, or relative to the # resolution of the data by using \code{\link[ggplot2]{rel}}. #' @param polar A logical of length 1, specifying whether the glyphs should #' be drawn in polar coordinates. Defaults to \code{FALSE}. #' @param x_major,y_major The name of the variable (as a #' string) for the major x and y axes. Together, the # combination of \code{x_major} and \code{y_major} specifies a grid cell. #' @export #' @author Di Cook, Heike Hofmann, Hadley Wickham glyphplot <- function(data, width, height, polar, x_major, y_major) { structure( data, width = width, height = height, polar = polar, x_major = x_major, y_major = y_major, class = c("glyphplot", "data.frame") ) } #' @export #' @rdname glyphplot is.glyphplot <- function(x) { inherits(x, "glyphplot") } #' @export #' @rdname glyphplot "[.glyphplot" <- function(x, ...) { glyphplot( NextMethod(), width = attr(x, "width"), height = attr(x, "height"), x_major = attr(x, "x_major"), y_major = attr(x, "y_major"), polar = attr(x, "polar") ) } #' @param x glyphplot to be printed #' @param ... ignored #' @exportS3Method NULL #' @rdname glyphplot print.glyphplot <- function(x, ...) { NextMethod() if (attr(x, "polar")) { cat("Polar ") } else { cat("Cartesian ") } width <- format(attr(x, "width"), digits = 3) height <- format(attr(x, "height"), digits = 3) cat("glyphplot: \n") cat(" Size: [", width, ", ", height, "]\n", sep = "") cat( " Major axes: ", attr(x, "x_major"), ", ", attr(x, "y_major"), "\n", sep = "" ) # cat("\n") } # For R 4.2 support only # https://github.com/wch/s3ops/blob/51c4a937025b5c3a19be766bd73db06ab574b1a0/README.md#a-solution-for-packages `_print_glyphplot` <- function(x, ...) { print.glyphplot(x, ...) } # Rescaling functions -------------------------------------------------------- #' Rescaling functions #' #' @param x numeric vector #' @param xlim value used in \code{range} #' @name rescale01 #' @export #' @rdname rescale01 range01 <- function(x) { rng <- range(x, na.rm = TRUE) (x - rng[1]) / (rng[2] - rng[1]) } #' @export #' @rdname rescale01 max1 <- function(x) { x / max(x, na.rm = TRUE) } #' @export #' @rdname rescale01 mean0 <- function(x) { x - mean(x, na.rm = TRUE) } #' @export #' @rdname rescale01 min0 <- function(x) { x - min(x, na.rm = TRUE) } #' @export #' @rdname rescale01 rescale01 <- function(x, xlim = NULL) { if (is.null(xlim)) { rng <- range(x, na.rm = TRUE) } else { rng <- xlim } (x - rng[1]) / (rng[2] - rng[1]) } #' @export #' @rdname rescale01 rescale11 <- function(x, xlim = NULL) { 2 * rescale01(x, xlim) - 1 } #' Add reference lines for each cell of the glyphmap. #' #' @param data A glyphmap structure. #' @param color Set the color to draw in, default is "white" #' @param size Set the line size, default is 1.5 #' @param ... other arguments passed onto [ggplot2::geom_line()] #' @export add_ref_lines <- function(data, color = "white", size = 1.5, ...) { rl <- ref_lines(data) geom_path(data = rl, color = color, linewidth = size, ...) } #' Add reference boxes around each cell of the glyphmap. #' #' @param data A glyphmap structure. #' @param var_fill Variable name to use to set the fill color #' @param color Set the color to draw in, default is "white" #' @param size Set the line size, default is 0.5 #' @param fill fill value used if \code{var_fill} is \code{NULL} #' @param ... other arguments passed onto [ggplot2::geom_rect()] #' @export add_ref_boxes <- function( data, var_fill = NULL, color = "white", size = 0.5, fill = NA, ... ) { rb <- ref_boxes(data, var_fill) if (!is.null(var_fill)) { geom_rect( aes_all(names(rb)), data = rb, color = color, linewidth = size, inherit.aes = FALSE, ... ) } else { geom_rect( aes_all(names(rb)), data = rb, color = color, linewidth = size, inherit.aes = FALSE, fill = fill, ... ) } } GGally/R/ggfacet.R0000644000176200001440000001065315047655266013402 0ustar liggesusers#' Single \pkg{ggplot2} plot matrix with \code{\link[ggplot2]{facet_grid}} #' #' #' @param data data.frame that contains all columns to be displayed. This data will be melted before being passed into the function \code{fn} #' @param mapping aesthetic mapping (besides \code{x} and \code{y}). See \code{\link[ggplot2]{aes}()} #' @param fn function to be executed. Similar to \code{\link{ggpairs}} and \code{\link{ggduo}}, the function may either be a string identifier or a real function that \code{\link{wrap}} understands. #' @param ... extra arguments passed directly to \code{fn} #' @param columnsX columns to be displayed in the plot matrix #' @param columnsY rows to be displayed in the plot matrix #' @param columnLabelsX,columnLabelsY column and row labels to display in the plot matrix #' @param xlab,ylab,title plot matrix labels #' @param scales parameter supplied to \code{ggplot2::\link[ggplot2]{facet_grid}}. Default behavior is \code{"free"} #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' if (requireNamespace("chemometrics", quietly = TRUE)) { #' data(NIR, package = "chemometrics") #' NIR_sub <- data.frame(NIR$yGlcEtOH, NIR$xNIR[, 1:3]) #' str(NIR_sub) #' x_cols <- c("X1115.0", "X1120.0", "X1125.0") #' y_cols <- c("Glucose", "Ethanol") #' #' # using ggduo directly #' p <- ggduo(NIR_sub, x_cols, y_cols, types = list(continuous = "points")) #' p_(p) #' #' # using ggfacet #' p <- ggfacet(NIR_sub, x_cols, y_cols) #' p_(p) #' #' # add a smoother #' p <- ggfacet(NIR_sub, x_cols, y_cols, fn = "smooth_loess") #' p_(p) #' # same output #' p <- ggfacet(NIR_sub, x_cols, y_cols, fn = ggally_smooth_loess) #' p_(p) #' #' # Change scales to be the same in for every row and for every column #' p <- ggfacet(NIR_sub, x_cols, y_cols, scales = "fixed") #' p_(p) #' } #' @importFrom dplyr arrange .data reframe ggfacet <- function( data, mapping = NULL, columnsX = 1:ncol(data), columnsY = 1:ncol(data), fn = ggally_points, ..., columnLabelsX = names(data[columnsX]), columnLabelsY = names(data[columnsY]), xlab = NULL, ylab = NULL, title = NULL, scales = "free" ) { data <- fix_data(data) fn <- wrap(fn) # fix args if ( !missing(mapping) && !is.list(mapping) && !missing(columnsX) && missing(columnsY) ) { columnsY <- columnsX columnsX <- mapping mapping <- NULL } stop_if_bad_mapping(mapping) columnsX <- fix_column_values( data, columnsX, columnLabelsX, "columnsX", "columnLabelsX" ) columnsY <- fix_column_values( data, columnsY, columnLabelsY, "columnsY", "columnLabelsY" ) # could theoretically work like # mtc <- mtcars # mtc$am <- as.factor(mtc$am) # mtc$cyl <- as.factor(mtc$cyl) # ggfacet( # mtc, # columnsY = c(1, 3, 4, 5), columnsX = c("am", "cyl"), # fn = function(data, mapping) {ggplot(data, mapping) + geom_boxplot()} # ) is_factor_x <- sapply(data[columnsX], is.factor) if (sum(is_factor_x) != 0) { cli::cli_warn( "{.val {sum(is_factor_x)}} factor variables are being removed from X columns" ) columnsX <- columnsX[!is_factor_x] columnLabelsX <- columnLabelsX[!is_factor_x] } is_factor_y <- sapply(data[columnsY], is.factor) if (sum(is_factor_y) != 0) { cli::cli_warn( "{.val {sum(is_factor_y)}} factor variables are being removed from Y columns" ) columnsY <- columnsY[!is_factor_y] columnLabelsY <- columnLabelsY[!is_factor_y] } tall_data <- expand.grid(.x_col = columnsX, .y_col = columnsY) |> reframe( .by = c(".x_col", ".y_col"), data, .x_val = data[[.data$.x_col]], .y_val = data[[.data$.y_col]] ) |> arrange(.data$.x_col, .data$.y_col) if (is.null(mapping)) { mapping <- aes() } mapping[c("x", "y")] <- aes(x = !!as.name(".x_val"), y = !!as.name(".y_val")) names(columnLabelsX) <- as.character(columnsX) names(columnLabelsY) <- as.character(columnsY) labeller <- function(vals) { val_names <- names(vals) if (".x_col" %in% val_names) { vals[[".x_col"]] <- columnLabelsX[as.character(vals[[".x_col"]])] } if (".y_col" %in% val_names) { vals[[".y_col"]] <- columnLabelsY[as.character(vals[[".y_col"]])] } vals } p <- fn(tall_data, mapping, ...) + facet_grid(.y_col ~ .x_col, labeller = labeller, scales = scales) + labs(title = title, x = xlab, y = ylab) p } GGally/R/data-happy.R0000644000176200001440000000334014526737223014020 0ustar liggesusers#' Data related to happiness from the General Social Survey, 1972-2006. #' #' This data extract is taken from Hadley Wickham's \code{productplots} package. #' The original description follows, with minor edits. #' #' The data is a small sample of variables related to #' happiness from the General Social Survey (GSS). The GSS #' is a yearly cross-sectional survey of Americans, run from #' 1972. We combine data for 25 years to yield 51,020 #' observations, and of the over 5,000 variables, we select #' nine related to happiness: #' #' @details \itemize{ #' \item age. age in years: 18--89. #' \item degree. highest education: lt high school, high school, junior college, bachelor, graduate. #' \item finrela. relative financial status: far above, above average, average, below average, far below. #' \item happy. happiness: very happy, pretty happy, not too happy. #' \item health. health: excellent, good, fair, poor. #' \item marital. marital status: married, never married, divorced, widowed, separated. #' \item sex. sex: female, male. #' \item wtsall. probability weight. 0.43--6.43. #' } #' #' @docType data #' @keywords datasets #' @name happy #' @usage data(happy) #' @format A data frame with 51020 rows and 10 variables #' @references #' Smith, Tom W., Peter V. Marsden, Michael Hout, Jibum Kim. \emph{General Social Surveys, 1972-2006}. #' \[machine-readable data file\]. Principal Investigator, Tom W. Smith; Co-Principal Investigators, #' Peter V. Marsden and Michael Hout, NORC ed. #' Chicago: National Opinion Research Center, producer, 2005; #' Storrs, CT: The Roper Center for Public Opinion Research, University of Connecticut, distributor. #' 1 data file (57,061 logical records) and 1 codebook (3,422 pp). NULL GGally/R/ggally_colbar.R0000644000176200001440000001105515047655266014600 0ustar liggesusers#' Column and row bar plots #' #' Plot column or row percentage using bar plots. #' #' @param data data set using #' @param mapping aesthetics being used #' @param label_format formatter function for displaying proportions, not taken into account if a label aesthetic is provided in \code{mapping} #' @param ... other arguments passed to \code{\link[ggplot2]{geom_text}(...)} #' @param remove_percentage_axis should percentage axis be removed? Removes the y-axis for \code{ggally_colbar()} and x-axis for \code{ggally_rowbar()} #' @param remove_background should the \code{panel.background} be removed? #' @param reverse_fill_levels should the levels of the fill variable be reversed? #' @param geom_bar_args other arguments passed to \code{\link[ggplot2]{geom_bar}(...)} #' @author Joseph Larmarange #' @keywords hplot #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' p_(ggally_colbar(tips, mapping = aes(x = smoker, y = sex))) #' p_(ggally_rowbar(tips, mapping = aes(x = smoker, y = sex))) #' #' # change labels' size #' p_(ggally_colbar(tips, mapping = aes(x = smoker, y = sex), size = 8)) #' #' # change labels' colour and use bold #' p_(ggally_colbar(tips, #' mapping = aes(x = smoker, y = sex), #' colour = "white", fontface = "bold" #' )) #' #' # display number of observations instead of proportions #' p_(ggally_colbar(tips, mapping = aes(x = smoker, y = sex, label = after_stat(count)))) #' #' # custom bar width #' p_(ggally_colbar(tips, mapping = aes(x = smoker, y = sex), geom_bar_args = list(width = .5))) #' #' # change format of labels #' p_(ggally_colbar(tips, #' mapping = aes(x = smoker, y = sex), #' label_format = scales::label_percent(accuracy = .01, decimal.mark = ",") #' )) #' #' p_(ggduo( #' data = as.data.frame(Titanic), #' mapping = aes(weight = Freq), #' columnsX = "Survived", #' columnsY = c("Sex", "Class", "Age"), #' types = list(discrete = "rowbar"), #' legend = 1 #' )) ggally_colbar <- function( data, mapping, label_format = scales::label_percent(accuracy = .1), ..., remove_background = FALSE, remove_percentage_axis = FALSE, reverse_fill_levels = FALSE, geom_bar_args = NULL ) { if (is.null(mapping$x)) { cli::cli_abort("{.field x} aesthetic is required.") } if (is.null(mapping$y)) { cli::cli_abort("{.field y} aesthetic is required.") } # y should be mapped to fill and x to by mapping$fill <- mapping$y mapping$y <- NULL mapping$by <- mapping$x # colour should not be mapped in aes if (!is.null(mapping$colour)) { mapping$colour <- NULL } # label mapping if (!is.null(mapping$label)) { mapping_text <- aes() mapping_text$label <- mapping$label } else { mapping_text <- aes(label = label_format(after_stat(!!as.name("prop")))) } # position for geom_bar geom_bar_args$position <- position_fill(reverse = reverse_fill_levels) p <- ggplot(data, mapping) + do.call(geom_bar, geom_bar_args) + geom_text( mapping = mapping_text, stat = "prop", position = position_fill(.5, reverse = reverse_fill_levels), ... ) + scale_y_continuous( labels = scales::label_percent(), expand = expansion(ifelse(remove_background, 0, .05), 0) ) + scale_x_discrete(expand = expansion(0, ifelse(remove_background, 0, .6))) + ylab("") + guides(fill = guide_legend(reverse = reverse_fill_levels)) if (isTRUE(remove_background)) { p <- p + theme( panel.background = element_blank() ) } if (isTRUE(remove_percentage_axis)) { p <- p + theme( panel.grid = element_blank(), axis.text.y = element_blank(), axis.ticks.y = element_blank() ) } p } #' @rdname ggally_colbar #' @export ggally_rowbar <- function( data, mapping, label_format = scales::label_percent(accuracy = .1), ..., remove_background = FALSE, remove_percentage_axis = FALSE, reverse_fill_levels = TRUE, geom_bar_args = NULL ) { mapping <- mapping_swap_x_y(mapping) p <- ggally_colbar( data = data, mapping = mapping, label_format = label_format, ..., remove_background = remove_background, remove_percentage_axis = FALSE, reverse_fill_levels = reverse_fill_levels, geom_bar_args = geom_bar_args ) + coord_flip() + guides(fill = guide_legend(reverse = !reverse_fill_levels)) if (isTRUE(remove_percentage_axis)) { p <- p + theme( panel.grid = element_blank(), axis.text.x = element_blank(), axis.ticks.x = element_blank() ) } p } GGally/R/ggmatrix_print.R0000644000176200001440000000321215027521001015002 0ustar liggesusers#' @include ggmatrix.R NULL ggplot2_set_last_plot <- utils::getFromNamespace("set_last_plot", "ggplot2") #' Print \code{\link{ggmatrix}} object #' #' Print method taken from \code{ggplot2:::print.ggplot} and altered for a \code{\link{ggmatrix}} object #' #' @param x plot to display #' @param newpage draw new (empty) page first? #' @param vp viewport to draw plot in #' @param ... arguments passed onto \code{\link{ggmatrix_gtable}} #' @author Barret Schloerke #' @import utils #' @importFrom grid grid.newpage grid.draw seekViewport pushViewport upViewport # ' @export #' @name print.ggmatrix #' @examples #' data(tips) #' pMat <- ggpairs(tips, c(1, 3, 2), mapping = ggplot2::aes(color = sex)) #' pMat # calls print(pMat), which calls print.ggmatrix(pMat) method(print, ggmatrix) <- function(x, newpage = TRUE, vp = NULL, ...) { if (newpage) { grid.newpage() } grDevices::recordGraphics( requireNamespace("GGally", quietly = TRUE), list(), getNamespace("GGally") ) gtable <- ggmatrix_gtable(x, ...) # must be done after gtable, as gtable calls many ggplot2::print.ggplot methods ggplot2_set_last_plot(x) if (is.null(vp)) { grid.draw(gtable) } else { if (is.character(vp)) { seekViewport(vp) } else { pushViewport(vp) } grid.draw(gtable) upViewport() } invisible(data) } #' Is Blank Plot? #' Find out if the plot equals a blank plot #' #' @keywords internal #' @examples #' GGally:::is_blank_plot(ggally_blank()) #' GGally:::is_blank_plot(ggally_points(mtcars, ggplot2::aes(disp, hp))) #' is_blank_plot <- function(p) { is.null(p) || identical(p, "blank") || inherits(p, "ggmatrix_blank") } GGally/R/ggmatrix_legend.R0000644000176200001440000000750015027521001015110 0ustar liggesusers#' Grab the legend and print it as a plot #' #' @param p ggplot2 plot object #' @param x legend object that has been grabbed from a ggplot2 object #' @param ... ignored #' @param plotNew boolean to determine if the `grid.newpage()` command and a new blank rectangle should be printed #' @import ggplot2 #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' library(ggplot2) #' histPlot <- #' ggplot(iris, aes(Sepal.Length, fill = Species)) + #' geom_histogram(binwidth = 1 / 4) #' (right <- histPlot) #' (bottom <- histPlot + theme(legend.position = "bottom")) #' (top <- histPlot + theme(legend.position = "top")) #' (left <- histPlot + theme(legend.position = "left")) #' #' p_(grab_legend(right)) #' p_(grab_legend(bottom)) #' p_(grab_legend(top)) #' p_(grab_legend(left)) grab_legend <- function(p) { builtP <- ggplot_build(p) pTable <- ggplot_gtable(builtP) ret <- get_legend_from_gtable(pTable) return(ret) } get_legend_from_gtable <- function(pTable) { ret <- ggplot2::zeroGrob() if (inherits(pTable, "gtable")) { if (any(grepl("guide-box", pTable$layout$name))) { ret <- gtable_filter(pTable, "guide-box") keep <- !vapply(ret$grobs, inherits, what = "zeroGrob", logical(1)) keep <- paste0(ret$layout$name[keep], collapse = "|") ret <- gtable_filter(ret, keep) } } class(ret) <- c("legend_guide_box", class(ret)) ret } #' @importFrom grid grid.newpage grid.draw gpar #' @importFrom gtable gtable_filter #' @rdname grab_legend #' @exportS3Method NULL print.legend_guide_box <- function(x, ..., plotNew = FALSE) { if (identical(plotNew, TRUE)) { grid.newpage() } grid::grid.rect(gp = grid::gpar(fill = "white", col = "white")) grid.draw(x) } # For R 4.2 only # https://github.com/wch/s3ops/blob/51c4a937025b5c3a19be766bd73db06ab574b1a0/README.md#a-solution-for-packages `_print_legend_guide_box` <- function(x, ..., plotNew = FALSE) { print.legend_guide_box(x, ..., plotNew = plotNew) } #' Plot only legend of plot function #' #' @param fn this value is passed directly to an empty \code{\link{wrap}} call. Please see \code{?\link{wrap}} for more details. #' @return a function that when called with arguments will produce the legend of the plotting function supplied. #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' # display regular plot #' p_(ggally_points(iris, ggplot2::aes(Sepal.Length, Sepal.Width, color = Species))) #' #' # Make a function that will only print the legend #' points_legend <- gglegend(ggally_points) #' p_(points_legend(iris, ggplot2::aes(Sepal.Length, Sepal.Width, color = Species))) #' #' # produce the sample legend plot, but supply a string that 'wrap' understands #' same_points_legend <- gglegend("points") #' identical( #' attr(attr(points_legend, "fn"), "original_fn"), #' attr(attr(same_points_legend, "fn"), "original_fn") #' ) #' #' # Complicated examples #' custom_legend <- wrap(gglegend("points"), size = 6) #' p_(custom_legend(iris, ggplot2::aes(Sepal.Length, Sepal.Width, color = Species))) #' #' # Use within ggpairs #' pm <- ggpairs( #' iris, 1:2, #' mapping = ggplot2::aes(color = Species), #' upper = list(continuous = gglegend("points")) #' ) #' p_(pm) #' #' # Place a legend in a specific location #' pm <- ggpairs(iris, 1:2, mapping = ggplot2::aes(color = Species)) #' # Make the legend #' pm[1, 2] <- points_legend(iris, ggplot2::aes(Sepal.Width, Sepal.Length, color = Species)) #' p_(pm) gglegend <- function(fn) { # allows users to supply a character just like in ggpairs fn <- wrapp(fn, list()) fn <- attr(fn, "fn") ret <- function(...) { p <- fn(...) grab_legend(p) } # attach function so people can see what it is attr(ret, "fn") <- fn attr(ret, "name") <- "gglegend" ret } GGally/R/ggnostic.R0000644000176200001440000006704715047655266013630 0ustar liggesusers# cooksd # on all predicted values # important to prediction # sigma # how much of a problem it is to the model ## .hat: Diagonal of the hat matrix ## .sigma: Estimate of residual standard deviation when corresponding observation is dropped from model ## .fitted: Fitted values of model ## .cooksd: Cooks distance, 'cooks.distance' ## .se.fit: Standard errors of fitted values ## .resid: Residuals ## .std.resid: Standardized residuals (Some unusual "lm" objects, such as "rlm" from MASS, may omit '.cooksd' and '.std.resid'. "gam" from mgcv omits '.sigma') #' Broomify a model #' #' broom::augment a model and add broom::glance and broom::tidy output as attributes. X and Y variables are also added. #' #' @param model model to be sent to [broom::augment()], [broom::glance()], and [broom::tidy()] #' @param lmStars boolean that determines if stars are added to labels #' @return broom::augmented data frame with the broom::glance data.frame and broom::tidy data.frame as 'broom_glance' and 'broom_tidy' attributes respectively. \code{var_x} and \code{var_y} variables are also added as attributes #' @export #' @examples #' data(mtcars) #' model <- stats::lm(mpg ~ wt + qsec + am, data = mtcars) #' broomified_model <- broomify(model) #' str(broomified_model) broomify <- function(model, lmStars = TRUE) { if (inherits(model, "broomify")) { return(model) } rlang::check_installed("broom") broom_glance_info <- broom::glance(model) broom_tidy_coef <- broom::tidy(model) broom_augment_rows <- broom::augment(model, se_fit = TRUE) attr(broom_augment_rows, "broom_glance") <- broom_glance_info attr(broom_augment_rows, "broom_tidy") <- broom_tidy_coef attr(broom_augment_rows, "var_x") <- model_beta_variables( data = broom_augment_rows ) attr(broom_augment_rows, "var_y") <- model_response_variables( data = broom_augment_rows ) attr(broom_augment_rows, "var_x_label") <- model_beta_label( model, data = broom_augment_rows, lmStars ) class(broom_augment_rows) <- c(class(broom_augment_rows), "broomify") return(broom_augment_rows) } model_variables <- function(model, data = broom::augment(model)) { augment_names <- names(data) augment_names <- augment_names[!grepl("^\\.", augment_names)] } #' Model term names #' #' Retrieve either the response variable names, the beta variable names, or beta variable names. If the model is an object of class 'lm', by default, the beta variable names will include anova significance stars. #' #' @param model model in question #' @param data equivalent to \code{broom::augment(model)} #' @param lmStars boolean that determines if stars are added to labels #' @return character vector of names #' @rdname model_terms #' @export #' @importFrom stats terms model_response_variables <- function(model, data = broom::augment(model)) { model_variables(model = model, data = data)[1] } #' @rdname model_terms #' @export model_beta_variables <- function(model, data = broom::augment(model)) { model_variables(model = model, data = data)[-1] } #' @importFrom stats symnum beta_stars <- function(p_val) { unclass(symnum( p_val, corr = FALSE, na = FALSE, cutpoints = c(0, 0.001, 0.01, 0.05, 0.1, 1), symbols = c("***", "**", "*", ".", " ") )) } #' @export #' @rdname model_terms #' @importFrom stats anova model_beta_label <- function( model, data = broom::augment(model), lmStars = TRUE ) { beta_vars <- model_beta_variables(model, data = data) if ((!identical(class(model), "lm")) || (!isTRUE(lmStars))) { return(beta_vars) } # for lm models only tidy_anova <- broom::tidy(anova(model)) tidy_anova <- tidy_anova[tidy_anova$term %in% beta_vars, ] p_vals <- tidy_anova$p.value names(p_vals) <- tidy_anova$term p_vals <- p_vals[beta_vars] x_labs <- paste(beta_vars, beta_stars(p_vals), sep = "") gsub("\\s+$", "", x_labs) } broom_columns <- function() { c(".fitted", ".se.fit", ".resid", ".hat", ".sigma", ".cooksd", ".std.resid") } #' RColorBrewer Set1 colors #' #' @param col standard color name used to retrieve hex color value #' @import RColorBrewer #' @export brew_colors <- function(col) { brew_cols <- RColorBrewer::brewer.pal(n = 9, "Set1") names(brew_cols) <- c( "red", "blue", "green", "purple", "orange", "yellow", "brown", "pink", "grey" ) brew_cols <- as.list(brew_cols) ret <- brew_cols[[col]] if (is.null(ret)) { missing_cols <- toString(names(brew_cols)) cli::cli_abort( "color {.arg col} not found in: {.code {missing_cols}}" ) } ret } #' \code{\link{ggnostic}} background line with geom #' #' If a non-null \code{linePosition} value is given, a line will be drawn before the given \code{continuous_geom} or \code{combo_geom} is added to the plot. #' #' Functions with a color in their name have different default color behavior. #' #' @param data,mapping supplied directly to [ggplot2::ggplot()] #' @param ... parameters supplied to \code{continuous_geom} or \code{combo_geom} #' @param linePosition,lineColor,lineSize,lineAlpha,lineType parameters supplied to #' [ggplot2::geom_line()] #' @param continuous_geom \pkg{ggplot2} geom that is executed after the line is (possibly) #' added and if the x data is continuous #' @param combo_geom \pkg{ggplot2} geom that is executed after the line is (possibly) added and #' if the x data is discrete #' @param mapColorToFill boolean to determine if combo plots should cut the color mapping to the fill mapping #' @return \pkg{ggplot2} plot object #' @rdname ggally_nostic_line ggally_nostic_line <- function( data, mapping, ..., linePosition = NULL, lineColor = "red", lineSize = 0.5, lineAlpha = 1, lineType = 1, continuous_geom = ggplot2::geom_point, combo_geom = ggplot2::geom_boxplot, mapColorToFill = TRUE ) { x_is_character <- is_character_column(data, mapping, "x") if (x_is_character && isTRUE(mapColorToFill)) { mapping <- mapping_color_to_fill(mapping) } p <- ggplot(data = data, mapping = mapping) if (!is.null(linePosition)) { p <- p + geom_hline( yintercept = linePosition, color = lineColor, linewidth = lineSize, alpha = lineAlpha, linetype = lineType ) } if (x_is_character) { p <- p + combo_geom(...) } else { p <- p + continuous_geom(...) } p } #' \code{\link{ggnostic}} residuals #' #' If non-null \code{pVal} and \code{sigma} values are given, confidence interval lines will be added to the plot at the specified \code{pVal} percentiles of a N(0, sigma) distribution. #' #' @param data,mapping,... parameters supplied to \code{\link{ggally_nostic_line}} #' @param linePosition,lineColor,lineSize,lineAlpha,lineType parameters supplied to #' [ggplot2::geom_line()] #' @param lineConfColor,lineConfSize,lineConfAlpha,lineConfType parameters supplied to the #' confidence interval lines #' @param pVal percentiles of a N(0, sigma) distribution to be drawn #' @param sigma sigma value for the \code{pVal} percentiles #' @param se boolean to determine if the confidence intervals should be displayed #' @param method,formula parameters supplied to [ggplot2::geom_smooth()]. #' Defaults to \code{"auto"} and \code{"y ~ x"} #' @return \pkg{ggplot2} plot object #' @seealso \code{stats::\link[stats]{residuals}} #' @export #' @importFrom stats qnorm #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' dt <- broomify(stats::lm(mpg ~ wt + qsec + am, data = mtcars)) #' p_(ggally_nostic_resid(dt, ggplot2::aes(wt, .resid))) ggally_nostic_resid <- function( data, mapping, ..., linePosition = 0, lineColor = brew_colors("grey"), lineSize = 0.5, lineAlpha = 1, lineType = 1, lineConfColor = brew_colors("grey"), lineConfSize = lineSize, lineConfAlpha = lineAlpha, lineConfType = 2, pVal = c(0.025, 0.975), sigma = attr(data, "broom_glance")$sigma, se = TRUE, method = "auto", formula = y ~ x ) { if (!is.null(linePosition) && !is.null(pVal) && !is.null(sigma)) { scaled_sigmas <- qnorm(pVal, lower.tail = TRUE, sd = sigma) linePosition <- c(linePosition, linePosition + scaled_sigmas) lineColor <- c(lineColor, lineConfColor, lineConfColor) lineType <- c(lineType, lineConfType, lineConfType) lineSize <- c(lineSize, lineConfSize, lineConfSize) lineAlpha <- c(lineAlpha, lineConfAlpha, lineConfAlpha) } p <- ggally_nostic_line( data, mapping, ..., linePosition = linePosition, lineColor = lineColor, lineType = lineType, lineSize = lineSize, lineAlpha = lineAlpha ) if (!is_character_column(data, mapping, "x")) { p <- p + geom_smooth(se = se, method = method, formula = formula) } p + coord_cartesian( ylim = range( c(linePosition, eval_data_col(data, mapping$y)), na.rm = TRUE ) ) } #' \code{\link{ggnostic}} standardized residuals #' #' If non-null \code{pVal} and \code{sigma} values are given, confidence interval lines will be added to the plot at the specified \code{pVal} locations of a N(0, 1) distribution. #' #' @param data,mapping,... parameters supplied to \code{\link{ggally_nostic_resid}} #' @param sigma sigma value for the \code{pVal} percentiles. Set to 1 for standardized residuals #' @seealso [stats::rstandard()] #' @return \pkg{ggplot2} plot object #' @rdname ggally_nostic_std_resid #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' dt <- broomify(stats::lm(mpg ~ wt + qsec + am, data = mtcars)) #' p_(ggally_nostic_std_resid(dt, ggplot2::aes(wt, .std.resid))) ggally_nostic_std_resid <- function( data, mapping, ..., sigma = 1 ) { ggally_nostic_resid( data, mapping, ..., sigma = sigma ) } #' \code{\link{ggnostic}} fitted value's standard error #' #' A function to display \code{stats::\link[stats]{predict}}'s standard errors #' #' @details #' As stated in \code{stats::\link[stats]{predict}} documentation: #' #' If the logical 'se.fit' is 'TRUE', standard errors of the predictions are calculated. If the numeric argument 'scale' is set (with optional ''df'), it is used as the residual standard deviation in the computation of the standard errors, otherwise this is extracted from the model fit. #' #' Since the se.fit is \code{TRUE} and scale is unset by default, the standard errors are extracted from the model fit. #' #' A base line of 0 is added to give reference to a perfect fit. #' #' @param data,mapping,...,lineColor parameters supplied to \code{\link{ggally_nostic_line}} #' @param linePosition base comparison for a perfect fit #' @seealso [stats::influence()] #' @return \pkg{ggplot2} plot object #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' dt <- broomify(stats::lm(mpg ~ wt + qsec + am, data = mtcars)) #' p_(ggally_nostic_se_fit(dt, ggplot2::aes(wt, .se.fit))) ggally_nostic_se_fit <- function( data, mapping, ..., lineColor = brew_colors("grey"), linePosition = NULL ) { ggally_nostic_line( data, mapping, ..., lineColor = lineColor, linePosition = linePosition ) } #' \code{\link{ggnostic}} leave one out model sigma #' #' A function to display [stats::influence()]'s sigma value. #' #' @details #' As stated in [stats::influence()] documentation: #' #' sigma: a vector whose i-th element contains the estimate of the residual standard deviation obtained when the i-th case is dropped from the regression. (The approximations needed for GLMs can result in this being 'NaN'.) #' #' A line is added to display the overall model's sigma value. This gives a baseline for comparison #' #' @param data,mapping,...,lineColor parameters supplied to \code{\link{ggally_nostic_line}} #' @param linePosition line that is drawn in the background of the plot. Defaults to the overall model's sigma value. #' @seealso [stats::influence()] #' @return \pkg{ggplot2} plot object #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' dt <- broomify(stats::lm(mpg ~ wt + qsec + am, data = mtcars)) #' p_(ggally_nostic_sigma(dt, ggplot2::aes(wt, .sigma))) ggally_nostic_sigma <- function( data, mapping, ..., lineColor = brew_colors("grey"), linePosition = attr(data, "broom_glance")$sigma ) { ggally_nostic_line( data, mapping, ..., lineColor = lineColor, linePosition = linePosition ) } #' \code{\link{ggnostic}} Cook's distance #' #' A function to display [stats::cooks.distance()]. #' #' @details #' A line is added at \eqn{F_{p,n-p}(0.5)}{F[p,n-p](0.5)} to display the general cutoff point for Cook's Distance. #' #' Reference: Michael H. Kutner, Christopher J. Nachtsheim, John Neter, and William Li. Applied linear statistical models. The McGraw-Hill / Irwin series operations and decision sciences. McGraw-Hill Irwin, 2005, p. 403 #' #' @param data,mapping,...,lineColor,lineType parameters supplied to \code{\link{ggally_nostic_line}} #' @param linePosition 4 / n is the general cutoff point for Cook's Distance #' @seealso [stats::cooks.distance()] #' @return \pkg{ggplot2} plot object #' @rdname ggally_nostic_cooksd #' @export #' @importFrom stats pf #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' dt <- broomify(stats::lm(mpg ~ wt + qsec + am, data = mtcars)) #' p_(ggally_nostic_cooksd(dt, ggplot2::aes(wt, .cooksd))) ggally_nostic_cooksd <- function( data, mapping, ..., linePosition = pf( 0.5, length(attr(data, "var_x")), nrow(data) - length(attr(data, "var_x")) ), lineColor = brew_colors("grey"), lineType = 2 ) { ggally_nostic_line( data, mapping, ..., linePosition = linePosition, lineColor = lineColor, lineType = lineType ) } #' \code{\link{ggnostic}} leverage points #' #' A function to display stats::influence's hat information against a given explanatory variable. #' #' @details #' As stated in [stats::influence()] documentation: #' #' hat: a vector containing the diagonal of the 'hat' matrix. #' #' The diagonal elements of the 'hat' matrix describe the influence each response value has on the fitted value for that same observation. #' #' A suggested "cutoff" line is added to the plot at a height of 2 * p / n and an expected line at a height of p / n. #' If either \code{linePosition} or \code{avgLinePosition} is \code{NULL}, the respective line will not be drawn. #' #' @param data,mapping,... supplied directly to \code{\link{ggally_nostic_line}} #' @param linePosition,lineColor,lineSize,lineAlpha,lineType parameters supplied to #' [ggplot2::geom_line()] for the cutoff line #' @param avgLinePosition,avgLineColor,avgLineSize,avgLineAlpha,avgLineType parameters supplied #' to [ggplot2::geom_line()] for the average line #' @seealso [stats::influence()] #' @return \pkg{ggplot2} plot object #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' dt <- broomify(stats::lm(mpg ~ wt + qsec + am, data = mtcars)) #' p_(ggally_nostic_hat(dt, ggplot2::aes(wt, .hat))) ggally_nostic_hat <- function( data, mapping, ..., linePosition = 2 * sum(eval_data_col(data, mapping$y)) / nrow(data), lineColor = brew_colors("grey"), lineSize = 0.5, lineAlpha = 1, lineType = 2, avgLinePosition = sum(eval_data_col(data, mapping$y)) / nrow(data), avgLineColor = brew_colors("grey"), avgLineSize = lineSize, avgLineAlpha = lineAlpha, avgLineType = 1 ) { if (is.null(linePosition)) { lineColor <- lineSize <- lineAlpha <- lineType <- NULL } if (is.null(avgLinePosition)) { avgLineColor <- avgLineSize <- avgLineAlpha <- avgLineType <- NULL } ggally_nostic_line( data, mapping, ..., linePosition = c(linePosition, avgLinePosition), lineColor = c(lineColor, avgLineColor), lineSize = c(lineSize, avgLineSize), lineType = c(lineType, avgLineType), lineAlpha = c(lineAlpha, avgLineAlpha) ) } #' Function switch #' #' Function that allows you to call different functions based upon an aesthetic variable value. #' #' @param types list of functions that follow the \code{\link{ggmatrix}} function standard: \code{function(data, mapping, ...){ #make ggplot2 object }}. One key should be a 'default' key for a default switch case. #' @param mapping_val mapping value to switch on. Defaults to the 'y' variable of the aesthetics list. #' @export #' @examples #' ggnostic_continuous_fn <- fn_switch(list( #' default = ggally_points, #' .fitted = ggally_points, #' .se.fit = ggally_nostic_se_fit, #' .resid = ggally_nostic_resid, #' .hat = ggally_nostic_hat, #' .sigma = ggally_nostic_sigma, #' .cooksd = ggally_nostic_cooksd, #' .std.resid = ggally_nostic_std_resid #' )) #' #' ggnostic_combo_fn <- fn_switch(list( #' default = ggally_box_no_facet, #' fitted = ggally_box_no_facet, #' .se.fit = ggally_nostic_se_fit, #' .resid = ggally_nostic_resid, #' .hat = ggally_nostic_hat, #' .sigma = ggally_nostic_sigma, #' .cooksd = ggally_nostic_cooksd, #' .std.resid = ggally_nostic_std_resid #' )) fn_switch <- function( types, mapping_val = "y" ) { function(data, mapping, ...) { var <- mapping_string(mapping[[mapping_val]]) fn <- types[[var]] %||% types[["default"]] if (is.null(fn)) { cli::cli_abort( "function could not be found for {.code {mapping_val}} or {.code {'default'}}. Please include one of these two keys as a function." ) } fn(data = data, mapping = mapping, ...) } } check_and_set_nostic_types <- function( types, default, .fitted, .resid, .std.resid, .sigma, .se.fit, .hat, .cooksd ) { types_names <- names(types) set_type_value <- function(name, value) { if (is.null(types[[name]])) { # value is not set if (!(name %in% types_names)) { # set suggested fn types[[name]] <<- value } else { # does not plot displayed types[[name]] <<- ggally_blank } } } set_type_value("default", default) set_type_value(".fitted", .fitted) set_type_value(".resid", .resid) set_type_value(".std.resid", .std.resid) set_type_value(".sigma", .sigma) set_type_value(".se.fit", .se.fit) set_type_value(".hat", .hat) set_type_value(".cooksd", .cooksd) types } #' Plot matrix of statistical model diagnostics #' #' #' @section `columnsY`: #' [broom::augment()] collects data from the supplied model and returns a data.frame with the following columns (taken directly from broom documentation). These columns are the only allowed values in the \code{columnsY} parameter to \code{\link{ggnostic}}. #' #' \describe{ #' \item{.resid}{Residuals} #' \item{.hat}{Diagonal of the hat matrix} #' \item{.sigma}{Estimate of residual standard deviation when #' corresponding observation is dropped from model} #' \item{.cooksd}{Cooks distance, [stats::cooks.distance()]} #' \item{.fitted}{Fitted values of model} #' \item{.se.fit}{Standard errors of fitted values} #' \item{.std.resid}{Standardized residuals} #' \item{response variable name}{The response variable in the model may be added. Such as \code{"mpg"} in the model \code{lm(mpg ~ ., data = mtcars)}} #' } #' #' @section `continuous`, `combo`, `discrete` types: #' Similar to \code{\link{ggduo}} and \code{\link{ggpairs}}, functions may be supplied to display the different column types. However, since the Y rows are fixed, each row has it's own corresponding function in each of the plot types: continuous, combo, and discrete. Each plot type list can have keys that correspond to the [broom::augment()] output: \code{".fitted"}, \code{".resid"}, \code{".std.resid"}, \code{".sigma"}, \code{".se.fit"}, \code{".hat"}, \code{".cooksd"}. An extra key, \code{"default"}, is used to plot the response variables of the model if they are included. Having a function for each diagnostic allows for very fine control over the diagnostics plot matrix. The functions for each type list are wrapped into a switch function that calls the function corresponding to the y variable being plotted. These switch functions are then passed directly to the \code{types} parameter in \code{\link{ggduo}}. #' #' @param model statistical model object such as output from \code{stats::\link[stats]{lm}} or \code{stats::\link[stats]{glm}} #' @param ... arguments passed directly to \code{\link{ggduo}} #' @param columnsX columns to be displayed in the plot matrix. Defaults to the predictor columns of the \code{model} #' @param columnsY rows to be displayed in the plot matrix. Defaults to residuals, leave one out sigma value, diagonal of the hat matrix, and Cook's Distance. The possible values are the response variables in the model and the added columns provided by [broom::augment()]. See details for more information. #' @param columnLabelsX,columnLabelsY column and row labels to display in the plot matrix #' @param xlab,ylab,title plot matrix labels passed directly to \code{\link{ggmatrix}} #' @param continuous,combo,discrete list of functions for each y variable. See details for more information. #' @template ggmatrix-progress #' @param data data defaults to a 'broomify'ed model object. This object will contain information about the X variables, Y variables, and multiple broom outputs. See \code{\link{broomify}(model)} for more information #' @export #' @examples #' # small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' data(mtcars) #' #' # use mtcars dataset and alter the 'am' column to display actual name values #' mtc <- mtcars #' mtc$am <- c("0" = "automatic", "1" = "manual")[as.character(mtc$am)] #' #' # step the complete model down to a smaller model #' mod <- stats::step(stats::lm(mpg ~ ., data = mtc), trace = FALSE) #' #' # display using defaults #' pm <- ggnostic(mod) #' p_(pm) #' #' # color by am value #' pm <- ggnostic(mod, mapping = ggplot2::aes(color = am)) #' p_(pm) #' #' # turn resid smooth error ribbon off #' pm <- ggnostic(mod, continuous = list(.resid = wrap("nostic_resid", se = FALSE))) #' p_(pm) #' #' #' ## plot residuals vs fitted in a ggpairs plot matrix #' dt <- broomify(mod) #' pm <- ggpairs( #' dt, c(".fitted", ".resid"), #' columnLabels = c("fitted", "residuals"), #' lower = list(continuous = ggally_nostic_resid) #' ) #' p_(pm) ggnostic <- function( model, ..., columnsX = attr(data, "var_x"), # columnsY = c(".fitted", ".se.fit", ".resid", ".std.resid", ".sigma", ".hat", ".cooksd"), columnsY = c(".resid", ".sigma", ".hat", ".cooksd"), columnLabelsX = attr(data, "var_x_label"), columnLabelsY = gsub("\\.", " ", gsub("^\\.", "", columnsY)), xlab = "explanatory variables", ylab = "diagnostics", title = paste(deparse(model$call, width.cutoff = 500L), collapse = "\n"), continuous = list( default = ggally_points, .fitted = ggally_points, .se.fit = ggally_nostic_se_fit, .resid = ggally_nostic_resid, .hat = ggally_nostic_hat, .sigma = ggally_nostic_sigma, .cooksd = ggally_nostic_cooksd, .std.resid = ggally_nostic_std_resid ), combo = list( default = ggally_box_no_facet, .fitted = ggally_box_no_facet, .se.fit = ggally_nostic_se_fit, .resid = ggally_nostic_resid, .hat = ggally_nostic_hat, .sigma = ggally_nostic_sigma, .cooksd = ggally_nostic_cooksd, .std.resid = ggally_nostic_std_resid ), discrete = list( default = ggally_ratio, .fitted = ggally_ratio, .se.fit = ggally_ratio, .resid = ggally_ratio, .hat = ggally_ratio, .sigma = ggally_ratio, .cooksd = ggally_ratio, .std.resid = ggally_ratio ), progress = NULL, data = broomify(model) ) { continuous_types <- check_and_set_nostic_types( continuous, default = ggally_nostic_line, .fitted = ggally_nostic_line, .se.fit = ggally_nostic_se_fit, .resid = ggally_nostic_resid, .hat = ggally_nostic_hat, .sigma = ggally_nostic_sigma, .cooksd = ggally_nostic_cooksd, .std.resid = ggally_nostic_std_resid ) combo_types <- check_and_set_nostic_types( combo, default = ggally_nostic_line, .fitted = ggally_nostic_line, .se.fit = ggally_nostic_se_fit, .resid = ggally_nostic_resid, .hat = ggally_nostic_hat, .sigma = ggally_nostic_sigma, .cooksd = ggally_nostic_cooksd, .std.resid = ggally_nostic_std_resid ) discrete_types <- check_and_set_nostic_types( discrete, default = ggally_ratio, .fitted = ggally_ratio, .se.fit = ggally_ratio, .resid = ggally_ratio, .hat = ggally_ratio, .sigma = ggally_ratio, .cooksd = ggally_ratio, .std.resid = ggally_ratio ) continuous_fn <- fn_switch(continuous_types, "y") combo_fn <- fn_switch(combo_types, "y") discrete_fn <- fn_switch(discrete_types, "y") columnsX <- match_nostic_columns(columnsX, attr(data, "var_x"), "columnsX") columnsY <- match_nostic_columns( columnsY, c(attr(data, "var_y"), broom_columns()), "columnsY" ) ggduo( data = data, columnsX = columnsX, columnsY = columnsY, columnLabelsX = columnLabelsX, columnLabelsY = columnLabelsY, types = list( continuous = continuous_fn, comboVertical = combo_fn, comboHorizontal = combo_fn, discrete = discrete_fn ), ..., progress = progress, title = title, xlab = xlab, ylab = ylab ) } # https://github.com/ggobi/ggobi/blob/master/data/pigs.xml #' Multiple time series #' #' GGally implementation of ts.plot. Wraps around the ggduo function and removes the column strips #' @param ... supplied directly to \code{\link{ggduo}} #' @param columnLabelsX remove top strips for the X axis by default #' @param xlab defaults to "time" #' @return \code{\link{ggmatrix}} object #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' p_(ggts(pigs, "time", c("gilts", "profit", "s_per_herdsz", "production", "herdsz"))) ggts <- function( ..., columnLabelsX = NULL, xlab = "time" ) { pm <- ggduo( ..., # remove the "time" strip columnLabelsX = columnLabelsX, xlab = xlab ) pm } # if (!is.null(group)) { # column_type <- unlist(lapply( # data[setdiff(names(data), broom_columns())], # plotting_data_type # )) # is_discrete <- column_type[column_type == "discrete"] # group_names <- names(is_discrete) # } else { # group_names <- deparse(mapping$group) # } # # line_mapping <- mapping # line_mapping[c("x", "y", "xend", "yend")] <- # aes_string(x = "xmin", y = "ymin", xend = "xmax", yend = "ymax") # # color_group <- c(group_names) # # if (!is.null(mapping$colour)) { # # set the colors to the mapping colors # color_group[length(color_group) + 1] <- deparse(mapping$colour) # } else { # # set the default color to the line color # line_mapping$colour <- I(lineColor) # } # # color_group <- unique(color_group) # # print(line_mapping) # print(color_group) # hline_data <- ddply( # data, color_group, # function(subsetDt) { # ret <- data.frame( # ymax = mean(subsetDt[[deparse(mapping$y)]], na.rm = TRUE), # ymin = mean(subsetDt[[deparse(mapping$y)]], na.rm = TRUE), # xmin = min(subsetDt[[deparse(mapping$x)]], na.rm = TRUE), # xmax = max(subsetDt[[deparse(mapping$x)]], na.rm = TRUE) # ) # # transfer the unique columns that need to be there # for (col in color_group) { # ret[[col]] <- unique(subsetDt[[col]]) # } # ret # } # ) match_nostic_columns <- function(columns, choices, name) { column_matches <- pmatch(columns, choices, nomatch = NA, duplicates.ok = TRUE) if (any(is.na(column_matches))) { extra_cols <- columns[is.na(column_matches)] avail_cols <- choices cli::cli_abort( "Could not match {.arg {name}}: {.val {extra_cols}} to choices: {.val {avail_cols}}" ) } columns <- choices[column_matches] columns } GGally/R/data-psychademic.R0000644000176200001440000000162314526737230015170 0ustar liggesusers#' UCLA canonical correlation analysis data #' #' This data contains 600 observations on eight variables #' #' @details \itemize{ #' \item locus_of_control - psychological #' \item self_concept - psychological #' \item motivation - psychological. Converted to four character groups #' \item read - academic #' \item write - academic #' \item math - academic #' \item science - academic #' \item female - academic. Dropped from original source #' \item sex - academic. Added as a character version of female column #' } #' #' @docType data #' @keywords datasets #' @name psychademic #' @usage data(psychademic) #' @format A data frame with 600 rows and 8 variables #' @references #' R Data Analysis Examples | Canonical Correlation Analysis. UCLA: Institute for Digital Research and Education. from http://www.stats.idre.ucla.edu/r/dae/canonical-correlation-analysis (accessed May 22, 2017). NULL GGally/R/ggmatrix.R0000644000176200001440000001603115047655266013620 0ustar liggesusers#' \pkg{ggplot2} plot matrix #' #' Make a generic matrix of \pkg{ggplot2} plots. #' #' @section Memory usage: #' Now that the \code{\link{print.ggmatrix}} method uses a large \pkg{gtable} object, rather than print each plot independently, memory usage may be of concern. From small tests, memory usage flutters around \code{object.size(data) * 0.3 * length(plots)}. So, for a 80Mb random noise dataset with 100 plots, about 2.4 Gb of memory needed to print. For the 3.46 Mb diamonds dataset with 100 plots, about 100 Mb of memory was needed to print. The benefits of using the \pkg{ggplot2} format greatly outweigh the price of about 20% increase in memory usage from the prior ad-hoc print method. #' #' @param plots list of plots to be put into matrix #' @param nrow,ncol number of rows and columns #' @param xAxisLabels,yAxisLabels strip titles for the x and y axis respectively. Set to \code{NULL} to not be displayed #' @param title,xlab,ylab title, x label, and y label for the graph. Set to \code{NULL} to not be displayed #' @param byrow boolean that determines whether the plots should be ordered by row or by column #' @param showStrips boolean to determine if each plot's strips should be displayed. \code{NULL} will default to the top and right side plots only. \code{TRUE} or \code{FALSE} will turn all strips on or off respectively. #' @param showAxisPlotLabels,showXAxisPlotLabels,showYAxisPlotLabels booleans that determine if the plots axis labels are printed on the X (bottom) or Y (left) part of the plot matrix. If \code{showAxisPlotLabels} is set, both \code{showXAxisPlotLabels} and \code{showYAxisPlotLabels} will be set to the given value. #' @template ggmatrix-labeller-param #' @template ggmatrix-switch-param #' @param xProportions,yProportions Value to change how much area is given for each plot. Either \code{NULL} (default), numeric value matching respective length, or \code{grid::\link[grid]{unit}} object with matching respective length #' @template ggmatrix-progress #' @param data data set using. This is the data to be used in place of 'ggally_data' if the plot is a string to be evaluated at print time #' @param gg \pkg{ggplot2} theme objects to be applied to every plot #' @template ggmatrix-legend-param #' @keywords hplot #' @author Barret Schloerke #' @importFrom rlang %||% .data #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' plotList <- list() #' for (i in 1:6) { #' plotList[[i]] <- ggally_text(paste("Plot #", i, sep = "")) #' } #' pm <- ggmatrix( #' plotList, #' 2, 3, #' c("A", "B", "C"), #' c("D", "E"), #' byrow = TRUE #' ) #' p_(pm) #' #' pm <- ggmatrix( #' plotList, #' 2, 3, #' xAxisLabels = c("A", "B", "C"), #' yAxisLabels = NULL, #' byrow = FALSE, #' showXAxisPlotLabels = FALSE #' ) #' p_(pm) ggmatrix <- new_class( "ggmatrix", properties = list( data = new_union(class_data.frame, NULL), plots = class_list, title = class_any, xlab = class_any, ylab = class_any, showStrips = new_union(class_logical, NULL), xAxisLabels = class_any, yAxisLabels = class_any, showXAxisPlotLabels = class_logical, showYAxisPlotLabels = class_logical, labeller = class_any, switch = new_union(class_character, NULL), # xProportions = new_union(class_numeric, class_grid_unit, NULL), xProportions = class_any, yProportions = class_any, progress = new_union( new_S3_class("progress_bar"), class_function, class_logical, NULL ), legend = class_any, gg = new_union(class_list, NULL), nrow = class_numeric, ncol = class_numeric, byrow = class_logical, meta = class_list ), constructor = function( plots, nrow, ncol, xAxisLabels = NULL, yAxisLabels = NULL, title = NULL, xlab = NULL, ylab = NULL, byrow = TRUE, showStrips = NULL, showAxisPlotLabels = TRUE, showXAxisPlotLabels = TRUE, showYAxisPlotLabels = TRUE, labeller = NULL, switch = NULL, xProportions = NULL, yProportions = NULL, progress = NULL, data = NULL, gg = NULL, legend = NULL ) { if (!is.list(plots)) { cli::cli_abort("{.arg plots} must be a {.code list()}") } check_nrow_ncol(nrow, "nrow") check_nrow_ncol(ncol, "ncol") if (!missing(showAxisPlotLabels)) { showXAxisPlotLabels <- showAxisPlotLabels showYAxisPlotLabels <- showAxisPlotLabels } progress <- as_ggmatrix_progress(progress, nrow * ncol) ret <- new_object( S7_object(), data = data, plots = plots, title = title, xlab = xlab, ylab = ylab, showStrips = showStrips, xAxisLabels = xAxisLabels, yAxisLabels = yAxisLabels, showXAxisPlotLabels = showXAxisPlotLabels, showYAxisPlotLabels = showYAxisPlotLabels, labeller = labeller, switch = switch, xProportions = xProportions, yProportions = yProportions, progress = progress, legend = legend, gg = gg, nrow = nrow, ncol = ncol, byrow = byrow, meta = list() ) # Prefix with ggmatrix class class(ret) <- c("ggmatrix", class(ret)) ret } ) check_nrow_ncol <- function(x, title) { if (!is.numeric(x)) { cli::cli_abort("{.arg {title}} must be a numeric value") } if (length(x) != 1) { cli::cli_abort("{.arg {title}} must be a single numeric value") } } # ------------------------------------------------------ # The following extractors and subassignment operators are for a smooth # transition and should be deprecated in the release cycle of choice #' @export `$.GGally::ggmatrix` <- function(x, i) { if (!prop_exists(x, i) && prop_exists(x, "meta")) { # This is a trick to bridge a gap between S3 and S7. We're allowing # for arbitrary fields by reading/writing to the 'meta' field when the # index does not point to an actual property. # The proper way to go about this is to implement new fields as properties # of a ggplot subclass. prop(x, "meta")[[i]] } else { `[[`(props(x), i) } } #' @export `$<-.GGally::ggmatrix` <- function(x, i, value) { if (!prop_exists(x, i) && prop_exists(x, "meta")) { # See explanation in `$.GGally::ggmatrix` prop(x, "meta")[[i]] <- value } else { props(x) <- `[[<-`(props(x), i, value) } x } #' @include ggpairs_getput.R #' @export `[.GGally::ggmatrix` <- `[.ggmatrix` #' @export `[<-.GGally::ggmatrix` <- `[<-.ggmatrix` #' @export `[[.GGally::ggmatrix` <- `$.GGally::ggmatrix` #' @export `[[<-.GGally::ggmatrix` <- `$<-.GGally::ggmatrix` # https://github.com/RConsortium/S7/issues/529 utils::globalVariables("properties") method(convert, list(from = ggmatrix, to = class_list)) <- function(from, to) { vals <- props(from) meta <- vals$meta # Remove meta from the list of properties vals$meta <- NULL # Collect the original values and the user added meta data c(vals, meta) } local({ method(as.list, ggmatrix) <- function(x, ...) { convert(x, class_list) } }) GGally/R/ggmatrix_gtable.R0000644000176200001440000002400715047655266015140 0ustar liggesusers#' \code{\link{ggmatrix}} \pkg{gtable} object #' #' Specialized method to print the \code{\link{ggmatrix}} object. #' #' @param pm \code{\link{ggmatrix}} object to be plotted #' @param ... ignored #' @param progress,progress_format `r lifecycle::badge("deprecated")` Please use the 'progress' parameter in your \code{\link{ggmatrix}}-like function. See \code{\link{ggmatrix_progress}} for a few examples. #' @author Barret Schloerke #' @importFrom grid gpar grid.layout grid.newpage grid.text grid.rect popViewport pushViewport viewport grid.draw #' @export #' @examples #' data(tips) #' pm <- ggpairs(tips, c(1, 3, 2), mapping = ggplot2::aes(color = sex)) #' ggmatrix_gtable(pm) ggmatrix_gtable <- function( pm, ..., progress = NULL, progress_format = formals(ggmatrix_progress)$format ) { # pm is for "plot matrix" # init progress bar handle if (missing(progress) && missing(progress_format)) { # only look at plot matrix for progress bar hasProgressBar <- !isFALSE(pm$progress) progress_fn <- pm$progress } else { lifecycle::deprecate_soft( when = "2.3.0", what = I("`progress` and `progress_format`"), details = "Please use the 'progress' parameter in your ggmatrix-like function call. See ?ggmatrix_progress for a few examples." ) # has progress variable defined # overrides pm$progress if (missing(progress_format)) { progress_fn <- as_ggmatrix_progress(progress) } else { progress_fn <- as_ggmatrix_progress( progress, pm$ncol * pm$nrow, format = progress_format ) } hasProgressBar <- !isFALSE(progress_fn) ggmatrix_progress } if (hasProgressBar) { pb <- progress_fn(pm) # pb$tick(tokens = list(plot_i = 1, plot_j = 1)) } # make a fake facet grid to fill in with proper plot panels get_labels <- function(labels, length_out, name) { if (is.expression(labels)) { cli::cli_abort(c( "{.arg {name}} can only be a character vector or {.code NULL}.", i = "Character values can be parsed using the {.arg labeller} parameter." )) } labels %||% as.character(seq_len(length_out)) } fake_data <- expand.grid( Var1 = get_labels(pm$xAxisLabels, pm$ncol, "xAxisLabels"), Var2 = get_labels(pm$yAxisLabels, pm$nrow, "yAxisLabels") ) fake_data$x <- 1 fake_data$y <- 1 # make the smallest plot possible so the guts may be replaced pm_fake <- ggplot(fake_data, mapping = aes(!!as.name("x"), !!as.name("y"))) + geom_point() + # make the 'fake' strips for x and y titles facet_grid( Var2 ~ Var1, labeller = pm$labeller %||% "label_value", switch = pm$switch ) + # remove both x and y titles labs(x = pm$xlab, y = pm$ylab) # add all custom ggplot2 things pm_fake <- add_gg_info(pm_fake, pm$gg) # add the title or remove the location completely if (is.null(pm$title)) { pm_fake <- pm_fake + theme(plot.title = element_blank()) } else { pm_fake <- pm_fake + labs(title = pm$title) } # if there are no labels, then there should be no strips if (is.null(pm$xAxisLabels)) { pm_fake <- pm_fake + theme(strip.text.x = element_blank()) } if (is.null(pm$yAxisLabels)) { pm_fake <- pm_fake + theme(strip.text.y = element_blank()) } # if there is a legend, make a fake legend that will be replaced later if (!is.null(pm$legend)) { pm_fake <- pm_fake + geom_point(mapping = aes(color = !!as.name("Var1"))) } # Suppress warnings such as: # ```r # ggbivariate( # tips, # "smoker", # c("day", "time", "sex", "tip"), # title = "Custom title" # ) + # labs(fill = "Smoker ?") # ``` # ``` # Ignoring unknown labels: # * fill : "Smoker ?" # ```` # as the plot / data does not exist yet suppressWarnings( # make a gtable of the plot matrix (to be filled in) pmg <- plot_gtable(pm_fake) ) ############### ## Everything beyond this point is only to fill in the correct information. ## No grobs should be appended or removed. It should be done with themes or geoms above ############### # help with grob positions pmg$layout$grob_pos <- seq_along(pmg$grobs) pmg_layout <- pmg$layout pmg_layout_name <- pmg_layout$name pmg_layout_grob_pos <- pmg_layout$grob_pos # zero out rest of the plotting area (just in case it is not replaced) zero_pos_vals <- pmg_layout_grob_pos[ str_detect( pmg_layout_name, paste(c("panel", "axis-l", "axis-b", "guide-box"), collapse = "|") ) ] for (zero_pos in zero_pos_vals) { pmg$grobs[[zero_pos]] <- ggplot2::zeroGrob() } pmg # insert legend if (!is.null(pm$legend)) { legend <- pm$legend if (is.numeric(legend)) { if (length(legend) == 1) { legend <- get_pos_rev(pm, legend) } else if (length(legend) > 2) { cli::cli_abort( "{.arg legend} must be a single or double numberic value. Or {.arg legend} must be an object produced from {.fn grab_legend}." ) } legend_obj <- grab_legend(pm[legend[1], legend[2]]) } else if (inherits(legend, "legend_guide_box")) { legend_obj <- legend } legend_layout <- pmg_layout[grepl("guide-box", pmg_layout_name), ] class(legend_obj) <- setdiff(class(legend_obj), "legend_guide_box") index <- legend_layout$grob_pos[match( legend_obj$layout$name, legend_layout$name )] pmg$grobs[index] <- legend_obj$grobs if ("guide-box" %in% legend_layout$name) { legend_position <- pm_fake$theme$legend.position %||% "right" if (legend_position %in% c("right", "left")) { pmg$widths[[legend_layout$l]] <- legend_obj$widths[1] } else if (legend_position %in% c("top", "bottom")) { pmg$heights[[legend_layout$t]] <- legend_obj$heights[1] } else { cli::cli_abort(c( "{.fn ggmatrix} does not know how display a legend when {.arg legend.position} with value: {.val {legend_position}}.", i = "Valid values: {.code c('right', 'left', 'bottom', 'top')}" )) } } else { # From ggplot 3.5.0 onwards, a plot can have multiple legends lr <- intersect( c("guide-box-left", "guide-box-right"), legend_obj$layout$name ) if (length(lr) > 0) { width <- legend_obj$widths[legend_obj$layout$l[match( lr, legend_obj$layout$name )]] pmg$widths[legend_layout$l[match(lr, legend_layout$name)]] <- width } tb <- intersect( c("guide-box-bottom", "guide-box-right"), legend_obj$layout$name ) if (length(tb) > 0) { height <- legend_obj$heights[legend_obj$layout$t[match( tb, legend_obj$layout$name )]] pmg$heights[legend_layout$t[match(tb, legend_layout$name)]] <- height } } } # Get all 'panel' grob_pos in the pmg panel_layout <- pmg_layout[str_detect(pmg_layout_name, "panel"), ] panel_locations_order <- order( panel_layout$t, panel_layout$l, decreasing = FALSE ) panel_locations <- panel_layout[panel_locations_order, "grob_pos"] # init the axis sizes left_axis_sizes <- numeric(pm$nrow + 1) bottom_axis_sizes <- numeric(pm$ncol + 1) axis_l_grob_pos <- pmg_layout_grob_pos[str_detect(pmg_layout_name, "axis-l")] axis_b_grob_pos <- pmg_layout_grob_pos[str_detect(pmg_layout_name, "axis-b")] # change the plot size ratios x_proportions <- pm$xProportions if (!is.null(x_proportions)) { panel_width_pos <- sort(unique(panel_layout$l)) if (!inherits(x_proportions, "unit")) { x_proportions <- grid::unit(x_proportions, "null") } pmg$widths[panel_width_pos] <- x_proportions } y_proportions <- pm$yProportions if (!is.null(y_proportions)) { panel_height_pos <- sort(unique(panel_layout$t)) if (!inherits(y_proportions, "unit")) { y_proportions <- grid::unit(y_proportions, "null") } pmg$heights[panel_height_pos] <- y_proportions } # build and insert all plots and axis labels plot_number <- 0 for (i in seq_len(pm$nrow)) { for (j in seq_len(pm$ncol)) { plot_number <- plot_number + 1 grob_pos_panel <- panel_locations[plot_number] # update the progress bar is possible if (hasProgressBar) { pb$tick(tokens = list(plot_i = i, plot_j = j)) } # retrieve plot p <- pm[i, j] # ignore all blank plots. all blank plots do not draw anything else if (is_blank_plot(p)) { next } # if it's not a ggplot2 obj, insert it and pray it works if (!is_ggplot(p)) { pmg$grobs[[grob_pos_panel]] <- p next } # get the plot's gtable to slice and dice pg <- plot_gtable(p) # if the left axis should be added if (j == 1 && pm$showYAxisPlotLabels) { left_axis_sizes[i] <- axis_size_left(pg) pmg <- add_left_axis( pmg, pg, show_strips = ((i == 1) && is.null(pm$showStrips)) || isTRUE(pm$showStrips), grob_pos = axis_l_grob_pos[i] ) } # if the bottom axis should be added if (i == pm$nrow && pm$showXAxisPlotLabels) { bottom_axis_sizes[j] <- axis_size_bottom(pg) pmg <- add_bottom_axis( pmg, pg, show_strips = ((j == pm$ncol) && is.null(pm$showStrips)) || isTRUE(pm$showStrips), grob_pos = axis_b_grob_pos[j] ) } # grab plot panel and insert pmg$grobs[[grob_pos_panel]] <- plot_panel( pg = pg, row_pos = i, col_pos = j, matrix_show_strips = pm$showStrips, matrix_ncol = pm$ncol, plot_show_axis_labels = p$showLabels ) } } # make sure the axes have enough room pmg <- set_max_axis_size( pmg, axis_sizes = left_axis_sizes, layout_name = "axis-l", layout_cols = c("l", "r"), pmg_key = "widths" # stop_msg = "left axis width issue!! Fix!" ) pmg <- set_max_axis_size( pmg, axis_sizes = bottom_axis_sizes, layout_name = "axis-b", layout_cols = c("t", "b"), pmg_key = "heights" # stop_msg = "bottom axis height issue!! Fix!" ) pmg } GGally/R/data-nasa.R0000644000176200001440000000156214526737225013627 0ustar liggesusers#' Data from the Data Expo JSM 2006. #' #' This data was provided by NASA for the competition. #' #' The data shows 6 years of monthly measurements of a 24x24 spatial grid #' from Central America: #' #' @details \itemize{ #' \item time integer specifying temporal order of measurements #' \item x, y, lat, long spatial location of measurements. #' \item cloudhigh, cloudlow, cloudmid, ozone, pressure, surftemp, temperature #' are the various satellite measurements. #' \item date, day, month, year specifying the time of measurements. #' \item id unique ide for each spatial position. #' } #' #' @docType data #' @keywords datasets #' @name nasa #' @usage data(nasa) #' @format A data frame with 41472 rows and 17 variables #' @references #' Murrell, P. (2010) The 2006 Data Expo of the American Statistical Association. #' Computational Statistics, 25:551-554. NULL GGally/R/zzz.R0000644000176200001440000000027715027521001012611 0ustar liggesusers.onLoad <- function(...) { registerS3method("print", "glyphplot", `_print_glyphplot`) registerS3method("print", "legend_guide_box", `_print_legend_guide_box`) S7::methods_register() } GGally/R/GGally-package.R0000644000176200001440000000104015027521001014511 0ustar liggesusers#' @keywords internal "_PACKAGE" # The following block is used by usethis to automatically manage # roxygen namespace tags. Modify with care! ## usethis namespace: start #' @importFrom lifecycle deprecate_soft #' @importFrom lifecycle deprecated ## usethis namespace: end NULL #' @import S7 # > ...import the S7 package into your namespace. # https://github.com/RConsortium/S7/issues/530#issuecomment-2730659813 NULL # enable usage of @name in package code #' @rawNamespace if (getRversion() < "4.3.0") importFrom("S7", "@") NULL GGally/R/ggpairs_getput.R0000644000176200001440000001107715047655266015027 0ustar liggesusers#' Insert a plot into a \code{\link{ggmatrix}} object #' #' Function to place your own plot in the layout. #' #' @param pm ggally object to be altered #' @param value ggplot object to be placed #' @param i row from the top #' @param j column from the left #' @keywords hplot #' @author Barret Schloerke #' @seealso \code{\link{getPlot}} #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' custom_car <- ggpairs(mtcars[, c("mpg", "wt", "cyl")], upper = "blank", title = "Custom Example") #' # ggplot example taken from example(geom_text) #' plot <- ggplot2::ggplot(mtcars, ggplot2::aes(x = wt, y = mpg, label = rownames(mtcars))) #' plot <- plot + #' ggplot2::geom_text(ggplot2::aes(colour = factor(cyl)), size = 3) + #' ggplot2::scale_colour_discrete(l = 40) #' custom_car[1, 2] <- plot #' personal_plot <- ggally_text( #' "ggpairs allows you\nto put in your\nown plot.\nLike that one.\n <---" #' ) #' custom_car[1, 3] <- personal_plot #' # custom_car #' #' # remove plots after creating a plot matrix #' custom_car[2, 1] <- NULL #' custom_car[3, 1] <- "blank" # the same as storing null #' custom_car[3, 2] <- NULL #' p_(custom_car) putPlot <- function(pm, value, i, j) { pos <- get_pos(pm, i, j) if (is.null(value)) { pm$plots[[pos]] <- make_ggmatrix_plot_obj(wrap( "blank", funcArgName = "ggally_blank" )) } else if (mode(value) == "character") { if (value == "blank") { pm$plots[[pos]] <- make_ggmatrix_plot_obj(wrap( "blank", funcArgName = "ggally_blank" )) } else { cli::cli_abort( "character values (besides {.code 'blank'}) are not allowed to be stored as plot values." ) } } else { pm$plots[[pos]] <- value } pm } #' Subset a \code{\link{ggmatrix}} object #' #' Retrieves the ggplot object at the desired location. #' #' @param pm \code{\link{ggmatrix}} object to select from #' @param i row from the top #' @param j column from the left #' @keywords hplot #' @author Barret Schloerke #' @importFrom utils capture.output #' @seealso \code{\link{putPlot}} #' @export #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' plotMatrix2 <- ggpairs(tips[, 3:2], upper = list(combo = "denstrip")) #' p_(plotMatrix2[1, 2]) getPlot <- function(pm, i, j) { if (FALSE) { cat("i: ", i, " j: ", j, "\n") } pos <- get_pos(pm, i, j) if (pos > length(pm$plots)) { plotObj <- NULL } else { plotObj <- pm$plots[[pos]] } if (is.null(plotObj)) { p <- ggally_blank() } else { if (ggplot2::is_ggplot(plotObj)) { p <- plotObj } else if (inherits(plotObj, "ggmatrix_plot_obj")) { fn <- plotObj$fn p <- fn(pm$data, plotObj$mapping) } else if (inherits(plotObj, "legend_guide_box")) { p <- plotObj } else { firstNote <- str_c( "Position: i = ", i, ", j = ", j, "\nstr(plotObj):\n", sep = "" ) strObj <- capture.output({ str(plotObj) }) cli::cli_abort(c( "unknown plot object type.", i = "{firstNote}{strObj}" )) } p <- add_gg_info(p, pm$gg) } p } get_pos <- function(pm, i, j) { if (isTRUE(pm$byrow)) { pos <- j + (pm$ncol * (i - 1)) } else { pos <- i + (pm$nrow * (j - 1)) } pos } get_pos_rev <- function(pm, pos) { if (isTRUE(pm$byrow)) { i <- ceiling(pos / pm$ncol) j <- (pos - 1) %% pm$ncol + 1 } else { i <- (pos - 1) %% pm$nrow + 1 j <- ceiling(pos / pm$nrow) } c(i, j) } check_i_j <- function(pm, i, j) { if ((length(i) > 1) || (mode(i) != "numeric")) { cli::cli_abort("{.arg i} may only be a single numeric value") } if ((length(j) > 1) || (mode(j) != "numeric")) { cli::cli_abort("{.arg j} may only be a single numeric value") } if (i > pm$nrow || i < 1) { cli::cli_abort("{.arg i} may only be in the range from 1:{pm$nrow}") } if (j > pm$ncol || j < 1) { cli::cli_abort("{.arg j} may only be in the range from 1:{pm$ncol}") } invisible() } #' @rdname getPlot #' @usage \method{[}{ggmatrix}(pm, i, j, ...) #' @param ... ignored #' @export `[.ggmatrix` <- function(pm, i, j, ...) { # print(list(x = i, y = j)) check_i_j(pm, i, j) getPlot(pm, i, j) } #' @rdname putPlot #' @usage \method{[}{ggmatrix}(pm, i, j, ...) <- value #' @param ... ignored #' @export `[<-.ggmatrix` <- function(pm, i, j, ..., value) { # x = matrix # i = first subset # j = second subset # y = value check_i_j(pm, i, j) putPlot(pm, value, i, j) } GGally/R/ggcorr.R0000644000176200001440000003564515047655270013270 0ustar liggesusers#' Correlation matrix #' #' Function for making a correlation matrix plot, using \pkg{ggplot2}. #' The function is directly inspired by Tian Zheng and Yu-Sung Su's #' \code{corrplot} function in the 'arm' package. #' Please visit \url{https://github.com/briatte/ggcorr} for the latest version #' of \code{ggcorr}, and see the vignette at #' \url{https://briatte.github.io/ggcorr/} for many examples of how to use it. #' #' @export #' @param data a data frame or matrix containing numeric (continuous) data. If #' any of the columns contain non-numeric data, they will be dropped with a #' warning. #' @param method a vector of two character strings. The first value gives the #' method for computing covariances in the presence of missing values, and must #' be (an abbreviation of) one of \code{"everything"}, \code{"all.obs"}, #' \code{"complete.obs"}, \code{"na.or.complete"} or #' \code{"pairwise.complete.obs"}. The second value gives the type of #' correlation coefficient to compute, and must be one of \code{"pearson"}, #' \code{"kendall"} or \code{"spearman"}. #' See \code{\link[stats]{cor}} for details. #' Defaults to \code{c("pairwise", "pearson")}. #' @param cor_matrix the named correlation matrix to use for calculations. #' Defaults to the correlation matrix of \code{data} when \code{data} is #' supplied. #' @param palette if \code{nbreaks} is used, a ColorBrewer palette to use #' instead of the colors specified by \code{low}, \code{mid} and \code{high}. #' Defaults to \code{NULL}. #' @param name a character string for the legend that shows the colors of the #' correlation coefficients. #' Defaults to \code{""} (no legend name). #' @param geom the geom object to use. Accepts either \code{"tile"}, #' \code{"circle"}, \code{"text"} or \code{"blank"}. #' @param min_size when \code{geom} has been set to \code{"circle"}, the minimum #' size of the circles. #' Defaults to \code{2}. #' @param max_size when \code{geom} has been set to \code{"circle"}, the maximum #' size of the circles. #' Defaults to \code{6}. #' @param label whether to add correlation coefficients to the plot. #' Defaults to \code{FALSE}. #' @param label_alpha whether to make the correlation coefficients increasingly #' transparent as they come close to 0. Also accepts any numeric value between #' \code{0} and \code{1}, in which case the level of transparency is set to that #' fixed value. #' Defaults to \code{FALSE} (no transparency). #' @param label_color the color of the correlation coefficients. #' Defaults to \code{"grey75"}. #' @param label_round the decimal rounding of the correlation coefficients. #' Defaults to \code{1}. #' @param label_size the size of the correlation coefficients. #' Defaults to \code{4}. #' @param nbreaks the number of breaks to apply to the correlation coefficients, #' which results in a categorical color scale. See 'Note'. #' Defaults to \code{NULL} (no breaks, continuous scaling). #' @param digits the number of digits to show in the breaks of the correlation #' coefficients: see \code{\link[base]{cut}} for details. #' Defaults to \code{2}. #' @param low the lower color of the gradient for continuous scaling of the #' correlation coefficients. #' Defaults to \code{"#3B9AB2"} (blue). #' @param mid the midpoint color of the gradient for continuous scaling of the #' correlation coefficients. #' Defaults to \code{"#EEEEEE"} (very light grey). #' @param high the upper color of the gradient for continuous scaling of the #' correlation coefficients. #' Defaults to \code{"#F21A00"} (red). #' @param midpoint the midpoint value for continuous scaling of the #' correlation coefficients. #' Defaults to \code{0}. #' @param limits bounding of color scaling for correlations, set \code{limits = NULL} or \code{FALSE} to remove #' @param drop if using \code{nbreaks}, whether to drop unused breaks from the #' color scale. #' Defaults to \code{FALSE} (recommended). #' @param layout.exp a multiplier to expand the horizontal axis to the left if #' variable names get clipped. #' Defaults to \code{0} (no expansion). #' @param legend.position where to put the legend of the correlation #' coefficients: see \code{\link[ggplot2]{theme}} for details. #' Defaults to \code{"bottom"}. #' @param legend.size the size of the legend title and labels, in points: see #' \code{\link[ggplot2]{theme}} for details. #' Defaults to \code{9}. #' @param ... other arguments supplied to \code{\link[ggplot2]{geom_text}} for #' the diagonal labels. #' @note Recommended values for the \code{nbreaks} argument are \code{3} to #' \code{11}, as values above 11 are visually difficult to separate and are not #' supported by diverging ColorBrewer palettes. #' #' @seealso \code{\link[stats]{cor}} and \code{corrplot} in the #' \code{arm} package. #' @author Francois Briatte, with contributions from Amos B. Elberg and #' Barret Schloerke #' @importFrom stats cor #' @importFrom dplyr rename #' @importFrom tidyr pivot_longer #' @importFrom grDevices colorRampPalette #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' # Default output. #' p_(ggcorr(nba_ppg_2008[, -1])) #' #' # Labeled output, with coefficient transparency. #' p_(ggcorr(nba_ppg_2008[, -1], #' label = TRUE, #' label_alpha = TRUE #' )) #' #' # Custom options. #' p_(ggcorr( #' nba_ppg_2008[, -1], #' name = expression(rho), #' geom = "circle", #' max_size = 10, #' min_size = 2, #' size = 3, #' hjust = 0.75, #' nbreaks = 6, #' angle = -45, #' palette = "PuOr" # colorblind safe, photocopy-able #' )) #' #' # Supply your own correlation matrix #' p_(ggcorr( #' data = NULL, #' cor_matrix = cor(nba_ppg_2008[, -1], use = "pairwise") #' )) ggcorr <- function( data, method = c("pairwise", "pearson"), cor_matrix = NULL, nbreaks = NULL, digits = 2, name = "", low = "#3B9AB2", mid = "#EEEEEE", high = "#F21A00", midpoint = 0, palette = NULL, geom = "tile", min_size = 2, max_size = 6, label = FALSE, label_alpha = FALSE, label_color = "black", label_round = 1, label_size = 4, limits = c(-1, 1), drop = is.null(limits) || identical(limits, FALSE), layout.exp = 0, legend.position = "right", legend.size = 9, ... ) { if (is.numeric(limits)) { if (length(limits) != 2) { cli::cli_abort("{.arg limits} must be of length 2 if numeric") } } if (is.logical(limits)) { if (limits) { limits <- c(-1, 1) } else { limits <- NULL } } # -- check geom argument ----------------------------------------------------- if (length(geom) > 1 || !geom %in% c("blank", "circle", "text", "tile")) { cli::cli_abort("incorrect geom value") } # -- correlation method ------------------------------------------------------ if (length(method) == 1) { method <- c(method, "pearson") # for backwards compatibility } # -- check data columns ------------------------------------------------------ if (!is.null(data)) { if (!is.data.frame(data)) { data <- as.data.frame(data) } x <- which(!sapply(data, is.numeric)) if (length(x) > 0) { ignored_cols <- names(data)[x] cli::cli_warn( "data in column{?s} {.field {ignored_cols}} {?is/are} not numeric and {?was/were} ignored" ) data <- data[, -x] } } # -- correlation matrix ------------------------------------------------------ if (is.null(cor_matrix)) { cor_matrix <- cor(data, use = method[1], method = method[2]) } m <- cor_matrix colnames(m) <- rownames(m) <- gsub(" ", "_", colnames(m)) # protect spaces # -- correlation data.frame -------------------------------------------------- m[upper.tri(m, diag = T)] <- NA rownames(m) <- colnames(m) m <- data.frame(m) m$.ggally_ggcorr_row_names <- rownames(m) m_long <- m |> tidyr::pivot_longer( cols = -".ggally_ggcorr_row_names", names_to = "y", values_to = "coefficient" ) |> dplyr::rename(x = ".ggally_ggcorr_row_names") |> dplyr::mutate(y = factor(.data$y, levels = rownames(m))) # -- correlation quantiles --------------------------------------------------- if (!is.null(nbreaks)) { x <- seq(-1, 1, length.out = nbreaks + 1) if (!nbreaks %% 2) { x <- sort(c(x, 0)) } m_long$breaks <- cut( m_long$coefficient, breaks = unique(x), include.lowest = TRUE, dig.lab = digits ) } # -- gradient midpoint ------------------------------------------------------- if (is.null(midpoint)) { midpoint <- median(m_long$coefficient, na.rm = TRUE) cli::cli_inform( "Color gradient midpoint set at median correlation to {.code {round(midpoint, 2)}}" ) } # -- plot structure ---------------------------------------------------------- m_long$label <- format( # round(c(0.2, 0, 0.001), digits = 2) #> c(0.2, 0, 0) round(m_long$coefficient, digits = label_round), # format(c(0.2, 0, 0), nsmall = 2) #> c("0.20", "0.00", "0.00") nsmall = label_round ) p <- ggplot(na.omit(m_long), aes(.data$x, .data$y)) if (geom == "tile") { if (is.null(nbreaks)) { # -- tiles, continuous --------------------------------------------------- p <- p + geom_tile(aes(fill = .data$coefficient), color = "white") } else { # -- tiles, ordinal ------------------------------------------------------ p <- p + geom_tile(aes(fill = .data$breaks), color = "white") } # -- tiles, color scale ---------------------------------------------------- if (is.null(nbreaks) && !is.null(limits)) { p <- p + scale_fill_gradient2( name, low = low, mid = mid, high = high, midpoint = midpoint, limits = limits ) } else if (is.null(nbreaks)) { p <- p + scale_fill_gradient2( name, low = low, mid = mid, high = high, midpoint = midpoint ) } else if (is.null(palette)) { x <- colorRampPalette(c(low, mid, high))(length(levels(m_long$breaks))) p <- p + scale_fill_manual(name, values = x, drop = drop) } else { p <- p + scale_fill_brewer(name, palette = palette, drop = drop) } } else if (geom == "circle") { p <- p + geom_point(aes(size = abs(.data$coefficient) * 1.25), color = "grey50") # border if (is.null(nbreaks)) { # -- circles, continuous ------------------------------------------------- p <- p + geom_point(aes( size = abs(.data$coefficient), color = .data$coefficient )) } else { # -- circles, ordinal ---------------------------------------------------- p <- p + geom_point(aes(size = abs(.data$coefficient), color = .data$breaks)) } p <- p + scale_size_continuous(range = c(min_size, max_size)) + guides(size = "none") r <- list(size = (min_size + max_size) / 2) # -- circles, color scale -------------------------------------------------- if (is.null(nbreaks) && !is.null(limits)) { p <- p + scale_color_gradient2( name, low = low, mid = mid, high = high, midpoint = midpoint, limits = limits ) } else if (is.null(nbreaks)) { p <- p + scale_color_gradient2( name, low = low, mid = mid, high = high, midpoint = midpoint ) } else if (is.null(palette)) { x <- colorRampPalette(c(low, mid, high))(length(levels(m_long$breaks))) p <- p + scale_color_manual(name, values = x, drop = drop) + guides(color = guide_legend(override.aes = r)) } else { p <- p + scale_color_brewer(name, palette = palette, drop = drop) + guides(color = guide_legend(override.aes = r)) } } else if (geom == "text") { if (is.null(nbreaks)) { # -- text, continuous ---------------------------------------------------- p <- p + geom_text( aes(label = label, color = .data$coefficient), size = label_size ) } else { # -- text, ordinal ------------------------------------------------------- p <- p + geom_text(aes(label = label, color = .data$breaks), size = label_size) } # -- text, color scale ---------------------------------------------------- if (is.null(nbreaks) && !is.null(limits)) { p <- p + scale_color_gradient2( name, low = low, mid = mid, high = high, midpoint = midpoint, limits = limits ) } else if (is.null(nbreaks)) { p <- p + scale_color_gradient2( name, low = low, mid = mid, high = high, midpoint = midpoint ) } else if (is.null(palette)) { x <- colorRampPalette(c(low, mid, high))(length(levels(m_long$breaks))) p <- p + scale_color_manual(name, values = x, drop = drop) } else { p <- p + scale_color_brewer(name, palette = palette, drop = drop) } } # -- coefficient labels ------------------------------------------------------ if (label) { if (isTRUE(label_alpha)) { p <- p + geom_text( aes(.data$x, .data$y, label = label, alpha = abs(.data$coefficient)), color = label_color, size = label_size, show.legend = FALSE ) } else if (label_alpha > 0) { p <- p + geom_text( aes(.data$x, .data$y, label = label), show.legend = FALSE, alpha = label_alpha, color = label_color, size = label_size ) } else { p <- p + geom_text( aes(.data$x, .data$y, label = label), color = label_color, size = label_size ) } } # -- horizontal scale expansion ---------------------------------------------- textData <- m_long[m_long$x == m_long$y & is.na(m_long$coefficient), ] xLimits <- levels(textData$y) textData$diagLabel <- textData$x if (!is.numeric(layout.exp) || layout.exp < 0) { cli::cli_abort("incorrect {.arg layout.exp} value") } else if (layout.exp > 0) { layout.exp <- as.integer(layout.exp) # copy to fill in spacer info textData <- rbind(textData[1:layout.exp, ], textData) spacer <- paste(".ggally_ggcorr_spacer_value", 1:layout.exp, sep = "") textData$x[1:layout.exp] <- spacer textData$diagLabel[1:layout.exp] <- NA xLimits <- c(spacer, levels(m_long$y)) } p <- p + geom_text( data = textData, aes(label = !!as.name("diagLabel")), ..., na.rm = TRUE ) + scale_x_discrete(breaks = NULL, limits = xLimits) + scale_y_discrete(breaks = NULL, limits = levels(m_long$y)) + labs(x = NULL, y = NULL) + coord_equal() + theme( panel.background = element_blank(), legend.key = element_blank(), legend.position = legend.position, legend.title = element_text(size = legend.size), legend.text = element_text(size = legend.size) ) return(p) } GGally/R/ggmatrix_make_plot.R0000644000176200001440000000272015023051677015641 0ustar liggesusersmake_label_plot <- function(types, sectionAes, label) { sectionAes$y <- NULL p <- make_ggmatrix_plot_obj( wrapp( "diagAxis", params = c("label" = label), funcArgName = "ggally_diagAxis" ), mapping = sectionAes ) return(p) } ggmatrix_plot_list <- (function() { make_diag_plot_wrapper <- function(sub_type_val) { plot_fn <- make_plot_wrapper(sub_type_val) function(types, sectionAes) { sectionAes$y <- NULL plot_fn(types, sectionAes) } } make_plot_wrapper <- function(sub_type_val) { function(types, sectionAes) { sub_type <- types[[sub_type_val]] sub_type_name <- get_subtype_name(sub_type) p <- make_ggmatrix_plot_obj( wrapp(sub_type, funcArgName = sub_type_name), mapping = sectionAes ) return(p) } } na_fn <- make_plot_wrapper("na") na_diag_fn <- make_plot_wrapper("na") continuous_fn <- make_plot_wrapper("continuous") combo_fn <- make_plot_wrapper("combo") discrete_fn <- make_plot_wrapper("discrete") continuous_diag_fn <- make_diag_plot_wrapper("continuous") discrete_diag_fn <- make_diag_plot_wrapper("discrete") function(type) { switch( type, "na" = na_fn, "na-diag" = na_diag_fn, "continuous" = continuous_fn, "combo" = combo_fn, "discrete" = discrete_fn, "continuous-diag" = continuous_diag_fn, "discrete-diag" = discrete_diag_fn, "label" = make_label_plot ) } })() GGally/R/data-nba_ppg_2008.R0000644000176200001440000001670615047655270014770 0ustar liggesusers#' NBA Player Statistics for 2008-2009 Season #' #' This dataset contains performance statistics for NBA players from the 2008-2009 season. #' The data includes top-performing players with their scoring averages and various #' basketball performance metrics. #' #' @details The dataset contains the following variables: #' \itemize{ #' \item Name - Player name #' \item G - Games played #' \item MIN - Minutes per game #' \item PTS - Points per game #' \item FGM - Field goals made per game #' \item FGA - Field goal attempts per game #' \item FGP - Field goal percentage #' \item FTM - Free throws made per game #' \item FTA - Free throw attempts per game #' \item FTP - Free throw percentage #' \item X3PM - Three-point field goals made per game #' \item X3PA - Three-point field goal attempts per game #' \item X3PP - Three-point field goal percentage #' \item ORB - Offensive rebounds per game #' \item DRB - Defensive rebounds per game #' \item TRB - Total rebounds per game #' \item AST - Assists per game #' \item STL - Steals per game #' \item BLK - Blocks per game #' \item TO - Turnovers per game #' \item PF - Personal fouls per game #' } #' #' @docType data #' @keywords datasets #' @name nba_ppg_2008 #' @usage data(nba_ppg_2008) #' @format A data frame with 50 rows and 21 variables #' @source Data originally collected from FlowingData tutorial #' @references #' FlowingData (2010) How to Make a Heatmap - a Quick and Easy Solution. #' \url{https://flowingdata.com/2010/01/21/how-to-make-a-heatmap-a-quick-and-easy-solution/} NULL # â¯â¯ nba # Name G MIN PTS FGM FGA FGP FTM FTA FTP X3PM X3PA X3PP ORB DRB TRB AST STL BLK TO PF # 1 Dwyane Wade 79 38.6 30.2 10.8 22.0 0.491 7.5 9.8 0.765 1.1 3.5 0.317 1.1 3.9 5.0 7.5 2.2 1.3 3.4 2.3 # 2 LeBron James 81 37.7 28.4 9.7 19.9 0.489 7.3 9.4 0.780 1.6 4.7 0.344 1.3 6.3 7.6 7.2 1.7 1.1 3.0 1.7 # 3 Kobe Bryant 82 36.2 26.8 9.8 20.9 0.467 5.9 6.9 0.856 1.4 4.1 0.351 1.1 4.1 5.2 4.9 1.5 0.5 2.6 2.3 # 4 Dirk Nowitzki 81 37.7 25.9 9.6 20.0 0.479 6.0 6.7 0.890 0.8 2.1 0.359 1.1 7.3 8.4 2.4 0.8 0.8 1.9 2.2 # 5 Danny Granger 67 36.2 25.8 8.5 19.1 0.447 6.0 6.9 0.878 2.7 6.7 0.404 0.7 4.4 5.1 2.7 1.0 1.4 2.5 3.1 # 6 Kevin Durant 74 39.0 25.3 8.9 18.8 0.476 6.1 7.1 0.863 1.3 3.1 0.422 1.0 5.5 6.5 2.8 1.3 0.7 3.0 1.8 # 7 Kevin Martin 51 38.2 24.6 6.7 15.9 0.420 9.0 10.3 0.867 2.3 5.4 0.415 0.6 3.0 3.6 2.7 1.2 0.2 2.9 2.3 # 8 Al Jefferson 50 36.6 23.1 9.7 19.5 0.497 3.7 5.0 0.738 0.0 0.1 0.000 3.4 7.5 11.0 1.6 0.8 1.7 1.8 2.8 # 9 Chris Paul 78 38.5 22.8 8.1 16.1 0.503 5.8 6.7 0.868 0.8 2.3 0.364 0.9 4.7 5.5 11.0 2.8 0.1 3.0 2.7 # 10 Carmelo Anthony 66 34.5 22.8 8.1 18.3 0.443 5.6 7.1 0.793 1.0 2.6 0.371 1.6 5.2 6.8 3.4 1.1 0.4 3.0 3.0 # 11 Chris Bosh 77 38.1 22.7 8.0 16.4 0.487 6.5 8.0 0.817 0.2 0.6 0.245 2.8 7.2 10.0 2.5 0.9 1.0 2.3 2.5 # 12 Brandon Roy 78 37.2 22.6 8.1 16.9 0.480 5.3 6.5 0.824 1.1 2.8 0.377 1.3 3.4 4.7 5.1 1.1 0.3 1.9 1.6 # 13 Antawn Jamison 81 38.2 22.2 8.3 17.8 0.468 4.2 5.6 0.754 1.4 3.9 0.351 2.4 6.5 8.9 1.9 1.2 0.3 1.5 2.7 # 14 Tony Parker 72 34.1 22.0 8.9 17.5 0.506 3.9 5.0 0.782 0.3 0.9 0.292 0.4 2.7 3.1 6.9 0.9 0.1 2.6 1.5 # 15 Amare Stoudemire 53 36.8 21.4 7.6 14.1 0.539 6.1 7.3 0.835 0.1 0.1 0.429 2.2 5.9 8.1 2.0 0.9 1.1 2.8 3.1 # 16 Joe Johnson 79 39.5 21.4 7.8 18.0 0.437 3.8 4.6 0.826 1.9 5.2 0.360 0.8 3.6 4.4 5.8 1.1 0.2 2.5 2.2 # 17 Devin Harris 69 36.1 21.3 6.6 15.1 0.438 7.2 8.8 0.820 0.9 3.2 0.291 0.4 2.9 3.3 6.9 1.7 0.2 3.1 2.4 # 18 Michael Redd 33 36.4 21.2 7.5 16.6 0.455 4.0 4.9 0.814 2.1 5.8 0.366 0.7 2.5 3.2 2.7 1.1 0.1 1.6 1.4 # 19 David West 76 39.3 21.0 8.0 17.0 0.472 4.8 5.5 0.884 0.1 0.3 0.240 2.1 6.4 8.5 2.3 0.6 0.9 2.1 2.7 # 20 Zachary Randolph 50 35.1 20.8 8.3 17.5 0.475 3.6 4.9 0.734 0.6 1.9 0.330 3.1 6.9 10.1 2.1 0.9 0.3 2.3 2.7 # 21 Caron Butler 67 38.6 20.8 7.3 16.2 0.453 5.1 6.0 0.858 1.0 3.1 0.310 1.8 4.4 6.2 4.3 1.6 0.3 3.1 2.5 # 22 Vince Carter 80 36.8 20.8 7.4 16.8 0.437 4.2 5.1 0.817 1.9 4.9 0.385 0.9 4.2 5.1 4.7 1.0 0.5 2.1 2.9 # 23 Stephen Jackson 59 39.7 20.7 7.0 16.9 0.414 5.0 6.0 0.826 1.7 5.2 0.338 1.2 3.9 5.1 6.5 1.5 0.5 3.9 2.6 # 24 Ben Gordon 82 36.6 20.7 7.3 16.0 0.455 4.0 4.7 0.864 2.1 5.1 0.410 0.6 2.8 3.5 3.4 0.9 0.3 2.4 2.2 # 25 Dwight Howard 79 35.7 20.6 7.1 12.4 0.572 6.4 10.7 0.594 0.0 0.0 0.000 4.3 9.6 13.8 1.4 1.0 2.9 3.0 3.4 # 26 Paul Pierce 81 37.4 20.5 6.7 14.6 0.457 5.7 6.8 0.830 1.5 3.8 0.391 0.7 5.0 5.6 3.6 1.0 0.3 2.8 2.7 # 27 Al Harrington 73 34.9 20.1 7.3 16.6 0.439 3.2 4.0 0.793 2.3 6.4 0.364 1.4 4.9 6.2 1.4 1.2 0.3 2.2 3.1 # 28 Jamal Crawford 65 38.1 19.7 6.4 15.7 0.410 4.6 5.3 0.872 2.2 6.1 0.360 0.4 2.6 3.0 4.4 0.9 0.2 2.3 1.4 # 29 Yao Ming 77 33.6 19.7 7.4 13.4 0.548 4.9 5.7 0.866 0.0 0.0 1.000 2.6 7.2 9.9 1.8 0.4 1.9 3.0 3.3 # 30 Richard Jefferson 82 35.9 19.6 6.5 14.9 0.439 5.1 6.3 0.805 1.4 3.6 0.397 0.7 3.9 4.6 2.4 0.8 0.2 2.0 3.1 # 31 Jason Terry 74 33.6 19.6 7.3 15.8 0.463 2.7 3.0 0.880 2.3 6.2 0.366 0.5 1.9 2.4 3.4 1.3 0.3 1.6 1.9 # 32 Deron Williams 68 36.9 19.4 6.8 14.5 0.471 4.8 5.6 0.849 1.0 3.3 0.310 0.4 2.5 2.9 10.7 1.1 0.3 3.4 2.0 # 33 Tim Duncan 75 33.7 19.3 7.4 14.8 0.504 4.5 6.4 0.692 0.0 0.0 0.000 2.7 8.0 10.7 3.5 0.5 1.7 2.2 2.3 # 34 Monta Ellis 25 35.6 19.0 7.8 17.2 0.451 3.1 3.8 0.830 0.3 1.0 0.308 0.6 3.8 4.3 3.7 1.6 0.3 2.7 2.7 # 35 Rudy Gay 79 37.3 18.9 7.2 16.0 0.453 3.3 4.4 0.767 1.1 3.1 0.351 1.4 4.2 5.5 1.7 1.2 0.7 2.6 2.8 # 36 Pau Gasol 81 37.1 18.9 7.3 12.9 0.567 4.2 5.4 0.781 0.0 0.0 0.500 3.2 6.4 9.6 3.5 0.6 1.0 1.9 2.1 # 37 Andre Iguodala 82 39.8 18.8 6.6 14.0 0.473 4.6 6.4 0.724 1.0 3.2 0.307 1.1 4.6 5.7 5.3 1.6 0.4 2.7 1.9 # 38 Corey Maggette 51 31.1 18.6 5.7 12.4 0.461 6.7 8.1 0.824 0.5 1.9 0.253 1.0 4.6 5.5 1.8 0.9 0.2 2.4 3.8 # 39 O.J. Mayo 82 38.0 18.5 6.9 15.6 0.438 3.0 3.4 0.879 1.8 4.6 0.384 0.7 3.1 3.8 3.2 1.1 0.2 2.8 2.5 # 40 John Salmons 79 37.5 18.3 6.5 13.8 0.472 3.6 4.4 0.830 1.6 3.8 0.417 0.7 3.5 4.2 3.2 1.1 0.3 2.1 2.3 # 41 Richard Hamilton 67 34.0 18.3 7.0 15.6 0.447 3.3 3.9 0.848 1.0 2.8 0.368 0.7 2.4 3.1 4.4 0.6 0.1 2.0 2.6 # 42 Ray Allen 79 36.3 18.2 6.3 13.2 0.480 3.0 3.2 0.952 2.5 6.2 0.409 0.8 2.7 3.5 2.8 0.9 0.2 1.7 2.0 # 43 LaMarcus Aldridge 81 37.1 18.1 7.4 15.3 0.484 3.2 4.1 0.781 0.1 0.3 0.250 2.9 4.6 7.5 1.9 1.0 1.0 1.5 2.6 # 44 Josh Howard 52 31.9 18.0 6.8 15.1 0.451 3.3 4.2 0.782 1.1 3.2 0.345 1.1 3.9 5.1 1.6 1.1 0.6 1.7 2.6 # 45 Maurice Williams 81 35.0 17.8 6.5 13.9 0.467 2.6 2.8 0.912 2.3 5.2 0.436 0.6 2.9 3.4 4.1 0.9 0.1 2.2 2.7 # 46 Shaquille O'neal 75 30.1 17.8 6.8 11.2 0.609 4.1 6.9 0.595 0.0 0.0 0.000 2.5 5.9 8.4 1.7 0.7 1.4 2.2 3.4 # 47 Rashard Lewis 79 36.2 17.7 6.1 13.8 0.439 2.8 3.4 0.836 2.8 7.0 0.397 1.2 4.6 5.7 2.6 1.0 0.6 2.0 2.5 # 48 Chauncey Billups 79 35.3 17.7 5.2 12.4 0.418 5.3 5.8 0.913 2.1 5.0 0.408 0.4 2.6 3.0 6.4 1.2 0.2 2.2 2.0 # 49 Allen Iverson 57 36.7 17.5 6.1 14.6 0.417 4.8 6.1 0.781 0.5 1.7 0.283 0.5 2.5 3.0 5.0 1.5 0.1 2.6 1.5 # 50 Nate Robinson 74 29.9 17.2 6.1 13.9 0.437 3.4 4.0 0.841 1.7 5.2 0.325 1.3 2.6 3.9 4.1 1.3 0.1 1.9 2.8 GGally/R/utils.R0000644000176200001440000000131715047405606013126 0ustar liggesusers#' Print if not CRAN #' #' Small function to print a plot if the R session is interactive or in a CI build #' #' @param p plot to be displayed #' @export print_if_interactive <- function(p) { if (interactive() || nzchar(Sys.getenv("CAN_PRINT")) || on_ci()) { print(p) } } on_ci <- function() { isTRUE(as.logical(Sys.getenv("CI"))) } str_c <- function(..., sep = "", collapse = NULL) { paste(..., sep = sep, collapse = collapse) } str_detect <- function(string, pattern, ...) { grepl(pattern, string, ...) } # str_replace <- function(string, pattern, replacement) { # sub(pattern, replacement, string) # } hf <- function(field) { eval(parse(text = read.dcf(".helper_functions", fields = field))) } GGally/R/ggparcoord.R0000644000176200001440000006554015047655266014136 0ustar liggesusers#' @importFrom dplyr all_of NULL #' Parallel coordinate plot #' #' A function for plotting static parallel coordinate plots, utilizing #' the \code{ggplot2} graphics package. #' #' \code{scale} is a character string that denotes how to scale the variables #' in the parallel coordinate plot. Options: #' \describe{ #' \item{\code{std}}{: univariately, subtract mean and divide by standard deviation} #' \item{\code{robust}}{: univariately, subtract median and divide by median absolute deviation} #' \item{\code{uniminmax}}{: univariately, scale so the minimum of the variable is zero, and the maximum is one} #' \item{\code{globalminmax}}{: no scaling is done; the range of the graphs is defined #' by the global minimum and the global maximum} #' \item{\code{center}}{: use \code{uniminmax} to standardize vertical height, then #' center each variable at a value specified by the \code{scaleSummary} param} #' \item{\code{centerObs}}{: use \code{uniminmax} to standardize vertical height, then #' center each variable at the value of the observation specified by the \code{centerObsID} param} #' } #' #' \code{missing} is a character string that denotes how to handle missing #' missing values. Options: #' \describe{ #' \item{\code{exclude}}{: remove all cases with missing values} #' \item{\code{mean}}{: set missing values to the mean of the variable} #' \item{\code{median}}{: set missing values to the median of the variable} #' \item{\code{min10}}{: set missing values to 10% below the minimum of the variable} #' \item{\code{random}}{: set missing values to value of randomly chosen observation on that variable} #' } #' #' \code{order} is either a vector of indices or a character string that denotes how to #' order the axes (variables) of the parallel coordinate plot. Options: #' \describe{ #' \item{\code{(default)}}{: order by the vector denoted by \code{columns}} #' \item{\code{(given vector)}}{: order by the vector specified} #' \item{\code{anyClass}}{: order variables by their separation between any one class and #' the rest (as opposed to their overall variation between classes). This is accomplished #' by calculating the F-statistic for each class vs. the rest, for each axis variable. #' The axis variables are then ordered (decreasing) by their maximum of k F-statistics, #' where k is the number of classes.} #' \item{\code{allClass}}{: order variables by their overall F statistic (decreasing) from #' an ANOVA with \code{groupColumn} as the explanatory variable (note: it is required #' to specify a \code{groupColumn} with this ordering method). Basically, this method #' orders the variables by their variation between classes (most to least).} #' \item{\code{skewness}}{: order variables by their sample skewness (most skewed to #' least skewed)} #' \item{\code{Outlying}}{: order by the scagnostic measure, Outlying, as calculated #' by the package \code{scagnostics}. Other scagnostic measures available to order #' by are \code{Skewed}, \code{Clumpy}, \code{Sparse}, \code{Striated}, \code{Convex}, \code{Skinny}, \code{Stringy}, and #' \code{Monotonic}. Note: To use these methods of ordering, you must have the \code{scagnostics} #' package loaded.} #' } #' #' @param data the dataset to plot #' @param columns a vector of variables (either names or indices) to be axes in the plot #' @param groupColumn a single variable to group (color) by #' @param scale method used to scale the variables (see Details) #' @param scaleSummary if scale=="center", summary statistic to univariately #' center each variable by #' @param centerObsID if scale=="centerObs", row number of case plot should #' univariately be centered on #' @param missing method used to handle missing values (see Details) #' @param order method used to order the axes (see Details) #' @param showPoints logical operator indicating whether points should be #' plotted or not #' @param splineFactor logical or numeric operator indicating whether spline interpolation should be used. Numeric values will multiplied by the number of columns, \code{TRUE} will default to cubic interpolation, \code{\link[base]{AsIs}} to set the knot count directly and \code{0}, \code{FALSE}, or non-numeric values will not use spline interpolation. #' @param alphaLines value of alpha scaler for the lines of the parcoord plot or a column name of the data #' @param boxplot logical operator indicating whether or not boxplots should #' underlay the distribution of each variable #' @param shadeBox color of underlying box which extends from the min to the #' max for each variable (no box is plotted if \code{shadeBox == NULL}) #' @param mapping aes string to pass to ggplot object #' @param title character string denoting the title of the plot #' @author Jason Crowley, Barret Schloerke, Dianne Cook, Heike Hofmann, Hadley Wickham #' @return ggplot object that if called, will print #' @importFrom dplyr across arrange bind_cols everything n reframe summarise mutate #' @importFrom stats complete.cases sd median mad lm spline #' @importFrom tidyr pivot_longer #' @export #' @examples #' # small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' # use sample of the diamonds data for illustrative purposes #' data(diamonds, package = "ggplot2") #' diamonds.samp <- diamonds[sample(1:dim(diamonds)[1], 100), ] #' #' # basic parallel coordinate plot, using default settings #' p <- ggparcoord(data = diamonds.samp, columns = c(1, 5:10)) #' p_(p) #' #' # this time, color by diamond cut #' p <- ggparcoord(data = diamonds.samp, columns = c(1, 5:10), groupColumn = 2) #' p_(p) #' #' # underlay univariate boxplots, add title, use uniminmax scaling #' p <- ggparcoord( #' data = diamonds.samp, columns = c(1, 5:10), groupColumn = 2, #' scale = "uniminmax", boxplot = TRUE, title = "Parallel Coord. Plot of Diamonds Data" #' ) #' p_(p) #' #' # utilize ggplot2 aes to switch to thicker lines #' p <- ggparcoord( #' data = diamonds.samp, columns = c(1, 5:10), groupColumn = 2, #' title = "Parallel Coord. Plot of Diamonds Data", mapping = ggplot2::aes(linewidth = 1) #' ) + #' ggplot2::scale_linewidth_identity() #' p_(p) #' #' # basic parallel coord plot of the msleep data, using 'random' imputation and #' # coloring by diet (can also use variable names in the columns and groupColumn #' # arguments) #' data(msleep, package = "ggplot2") #' p <- ggparcoord( #' data = msleep, columns = 6:11, groupColumn = "vore", missing = #' "random", scale = "uniminmax" #' ) #' p_(p) #' #' # center each variable by its median, using the default missing value handler, #' # 'exclude' #' p <- ggparcoord( #' data = msleep, columns = 6:11, groupColumn = "vore", scale = #' "center", scaleSummary = "median" #' ) #' p_(p) #' #' # with the iris data, order the axes by overall class (Species) separation using #' # the anyClass option #' p <- ggparcoord(data = iris, columns = 1:4, groupColumn = 5, order = "anyClass") #' p_(p) #' #' # add points to the plot, add a title, and use an alpha scalar to make the lines #' # transparent #' p <- ggparcoord( #' data = iris, columns = 1:4, groupColumn = 5, order = "anyClass", #' showPoints = TRUE, title = "Parallel Coordinate Plot for the Iris Data", #' alphaLines = 0.3 #' ) #' p_(p) #' #' # color according to a column #' iris2 <- iris #' iris2$alphaLevel <- c("setosa" = 0.2, "versicolor" = 0.3, "virginica" = 0)[iris2$Species] #' p <- ggparcoord( #' data = iris2, columns = 1:4, groupColumn = 5, order = "anyClass", #' showPoints = TRUE, title = "Parallel Coordinate Plot for the Iris Data", #' alphaLines = "alphaLevel" #' ) #' p_(p) #' #' ## Use splines on values, rather than lines (all produce the same result) #' columns <- c(1, 5:10) #' p <- ggparcoord(diamonds.samp, columns, groupColumn = 2, splineFactor = TRUE) #' p_(p) #' p <- ggparcoord(diamonds.samp, columns, groupColumn = 2, splineFactor = 3) #' p_(p) ggparcoord <- function( data, columns = 1:ncol(data), groupColumn = NULL, scale = "std", scaleSummary = "mean", centerObsID = 1, missing = "exclude", order = columns, showPoints = FALSE, splineFactor = FALSE, alphaLines = 1, boxplot = FALSE, shadeBox = NULL, mapping = NULL, title = "" ) { if (!identical(class(data), "data.frame")) { data <- as.data.frame(data) } saveData <- data ### Error Checking ### if (is.null(groupColumn)) { if (any(tolower(order) %in% c("anyclass", "allclass"))) { cli::cli_abort( "can't use the {.arg order} methods {.val anyClass} or {.val allClass} without specifying groupColumn" ) } } else if ( !((length(groupColumn) == 1) && (is.numeric(groupColumn) || is.character(groupColumn))) ) { cli::cli_abort( "invalid value for {.arg groupColumn}; must be a single numeric or character index" ) } if ( !(tolower(scale) %in% c( "std", "robust", "uniminmax", "globalminmax", "center", "centerobs" )) ) { cli::cli_abort(c( "invalid value for {.arg scale}; must be one of {.val std}, {.val robust}, {.val uniminmax}, {.val globalminmax}, {.val center}, or {.val centerObs}." )) } if (!(centerObsID %in% 1:dim(data)[1])) { cli::cli_abort( "invalid value for {.arg centerObsID}; must be a single numeric row index" ) } if ( !(tolower(missing) %in% c("exclude", "mean", "median", "min10", "random")) ) { cli::cli_abort( "invalid value for {.arg missing}; must be one of {.val exclude}, {.val mean}, {.val median}, {.val min10}, {.val random}." ) } possibleOrderValues <- c( "skewness", "allClass", "anyClass", "Outlying", "Skewed", "Clumpy", "Sparse", "Striated", "Convex", "Skinny", "Stringy", "Monotonic" ) if ( !(is.numeric(order) || (is.character(order) && (order %in% possibleOrderValues))) ) { cli::cli_abort( c( "invalid value for {.arg order}", "i" = "must either be a vector of column indices or one of {.or {.code {possibleOrderValues}}}" ) ) } if (!(is.logical(showPoints))) { cli::cli_abort( "invalid value for {.arg showPoints}; must be a logical operator" ) } alphaLinesIsCharacter <- is.character(alphaLines) if (alphaLinesIsCharacter) { if (!(alphaLines %in% names(data))) { cli::cli_abort("{.arg alphaLines} column is missing in data") } alphaVar <- data[[alphaLines]] alphaRange <- range(alphaVar) if (any(is.na(alphaRange))) { cli::cli_abort("missing data in {.arg alphaLines} column") } if (alphaRange[1] < 0 || alphaRange[2] > 1) { cli::cli_abort( "invalid value for {.arg alphaLines} column; max range must be from 0 to 1" ) } } else if ((alphaLines < 0) || (alphaLines > 1)) { cli::cli_abort( "invalid value for {.arg alphaLines}; must be a scalar value between 0 and 1" ) } if (!(is.logical(boxplot))) { cli::cli_abort( "invalid value for {.arg boxplot}; must be a logical operator" ) } if (!is.null(shadeBox) && length(shadeBox) != 1) { cli::cli_abort("invalid value for {.arg shadeBox}; must be a single color") } else { valid_color <- tryCatch( is.matrix(grDevices::col2rgb(shadeBox)), error = function(e) FALSE ) if (!valid_color) { cli::cli_abort( "invalid value for {.arg shadeBox}; must be a valid R color" ) } } if (is.logical(splineFactor)) { if (splineFactor) { splineFactor <- 3 } else { splineFactor <- 0 } } else if (!is.numeric(splineFactor)) { cli::cli_abort( "invalid value for {.arg splineFactor}; must be a logical or numeric value" ) } ### Setup ### if (is.numeric(groupColumn)) { groupColumn <- names(data)[groupColumn] } if (!is.null(groupColumn)) { groupVar <- data[[groupColumn]] } if (is.character(columns)) { columns_ <- c() for (colPos in seq_along(columns)) { columns_[colPos] <- which(colnames(data) == columns[colPos]) } columns <- columns_ } # data <- data[columns] # Change character vars to factors char.vars <- column_is_character(data) if (length(char.vars) >= 1) { for (char.var in char.vars) { data[[char.var]] <- factor(data[[char.var]]) } } # Change factors to numeric fact.vars <- column_is_factor(data) fact.vars <- setdiff(fact.vars, groupColumn) if (length(fact.vars) >= 1) { for (fact.var in fact.vars) { data[[fact.var]] <- as.numeric(data[[fact.var]]) } } # Save this form of the data for order calculations (don't want imputed # missing values affecting order, but do want any factor/character vars # being plotted as numeric) saveData2 <- data if (!is.null(groupColumn)) { saveData2[[groupColumn]] <- as.numeric(saveData2[[groupColumn]]) } p <- c(ncol(data) + 1, ncol(data) + 2) data$.ID <- as.factor(1:nrow(data)) data$anyMissing <- apply(is.na(data[, columns]), 1, any) columnsPlusTwo <- c(columns, p) inner_rescaler_default <- function(x, type = "sd", ...) { # copied directly from reshape because of import difficulties :-( # rescaler.default switch( type, rank = rank(x, ...), var = , sd = (x - mean(x, na.rm = TRUE)) / sd(x, na.rm = TRUE), robust = (x - median(x, na.rm = TRUE)) / mad(x, na.rm = TRUE), I = x, range = (x - min(x, na.rm = TRUE)) / diff(range(x, na.rm = TRUE)) ) } inner_rescaler <- function(x, type = "sd", ...) { # copied directly from reshape because of import difficulties :-( # rescaler.data.frame continuous <- sapply(x, is.numeric) if (any(continuous)) { if (type %in% c("sd", "robust", "range")) { # indicating columns containing only one single value singleVal <- sapply(x, function(col) { if (length(unique(col)) == 1) { TRUE } else { FALSE } }) ind <- continuous & !singleVal x[ind] <- lapply(x[ind], inner_rescaler_default, type = type, ...) x[singleVal] <- 1 } else { x[continuous] <- lapply( x[continuous], inner_rescaler_default, type = type, ... ) } } x } ### Scaling ### if (tolower(scale) %in% c("std", "robust", "uniminmax", "center")) { rescalerType <- c( "std" = "sd", "robust" = "robust", "uniminmax" = "range", "center" = "range" )[tolower(scale)] data[columnsPlusTwo] <- inner_rescaler( data[columnsPlusTwo], type = rescalerType ) if (tolower(scale) == "center") { data[columns] <- apply(data[columns], 2, function(x) { x <- x - eval( parse( text = paste( scaleSummary, "(x, na.rm=TRUE)", sep = "" ) ) ) }) } } ### Imputation ### if (tolower(missing) == "exclude") { dataCompleteCases <- complete.cases(data[columnsPlusTwo]) if (!is.null(groupColumn)) { groupVar <- groupVar[dataCompleteCases] } if (alphaLinesIsCharacter) { alphaVar <- alphaVar[dataCompleteCases] } data <- data[dataCompleteCases, ] saveData2 <- saveData2[dataCompleteCases, ] } else if (tolower(missing) %in% c("mean", "median", "min10", "random")) { missingFns <- list( mean = function(x) { mean(x, na.rm = TRUE) }, median = function(x) { median(x, na.rm = TRUE) }, min10 = function(x) { 0.9 * min(x, na.rm = TRUE) }, random = function(x) { num <- sum(is.na(x)) idx <- sample(which(!is.na(x)), num, replace = TRUE) x[idx] } ) missing_fn <- missingFns[[tolower(missing)]] data[columns] <- apply(data[columns], 2, function(x) { if (any(is.na(x))) { x[is.na(x)] <- missing_fn(x) } return(x) }) } ### Scaling (round 2) ### # Centering by observation needs to be done after handling missing values # in case the observation to be centered on has missing values if (tolower(scale) == "centerobs") { data[columnsPlusTwo] <- inner_rescaler(data[columnsPlusTwo], type = "range") data[columns] <- apply(data[columns], 2, function(x) { x <- x - x[centerObsID] }) } # meltIDVars <- c(".ID", "anyMissing") meltIDVars <- colnames(data)[-columns] if (!is.null(groupColumn)) { # data <- cbind(data, groupVar) # names(data)[dim(data)[2]] <- groupCol meltIDVars <- union(groupColumn, meltIDVars) } if (alphaLinesIsCharacter) { data <- cbind(data, alphaVar) names(data)[dim(data)[2]] <- alphaLines meltIDVars <- union(meltIDVars, alphaLines) } # if (is.list(mapping)) { # mappingNames <- names(mapping) # } # data.m <- melt(data, id.vars = meltIDVars, measure.vars = columns) # Return a data.frame for freqparcoord::freqparcoord. # The method uses vector recycling, which is not allowed in a tibble data.m <- as.data.frame(pivot_longer( data, cols = all_of(columns), names_to = "variable", values_to = "value" )) ### Ordering ### if (length(order) > 1 && is.numeric(order)) { data.m$variable <- factor(data.m$variable, levels = names(saveData)[order]) } else if ( order %in% c( "Outlying", "Skewed", "Clumpy", "Sparse", "Striated", "Convex", "Skinny", "Stringy", "Monotonic" ) ) { rlang::check_installed("scagnostics") scag <- scagnostics::scagnostics(saveData2) data.m$variable <- factor( data.m$variable, levels = scag_order(scag, names(saveData2), order) ) } else if (tolower(order) == "skewness") { abs.skew <- abs(apply(saveData2, 2, skewness)) data.m$variable <- factor( data.m$variable, levels = names(abs.skew)[order(abs.skew, decreasing = TRUE)] ) } else if (tolower(order) == "allclass") { f.stats <- rep(NA, length(columns)) names(f.stats) <- names(saveData2[columns]) for (i in 1:length(columns)) { f.stats[i] <- summary(lm(saveData2[, i] ~ groupVar))$fstatistic[1] } data.m$variable <- factor( data.m$variable, levels = names(f.stats)[order(f.stats, decreasing = TRUE)] ) } else if (tolower(order) == "anyclass") { axis.order <- singleClassOrder(groupVar, saveData2) data.m$variable <- factor(data.m$variable, levels = axis.order) } if (!is.null(groupColumn)) { mapping2 <- aes( x = !!as.name("variable"), y = !!as.name("value"), group = !!as.name(".ID"), colour = !!as.name(groupColumn) ) } else { mapping2 <- aes( x = !!as.name("variable"), y = !!as.name("value"), group = !!as.name(".ID") ) } mapping2 <- add_and_overwrite_aes(mapping2, mapping) # mapping2 <- add_and_overwrite_aes(aes(size = I(0.5)), mapping2) p <- ggplot(data = data.m, mapping = mapping2) if (!is.null(shadeBox)) { # Fix so that if missing = "min10", the box only goes down to the true min d.sum <- data.m |> summarise( min = min(.data$value), max = max(.data$value), .by = "variable" ) |> arrange(.data$variable) p <- p + geom_linerange( data = d.sum, linewidth = I(10), col = shadeBox, inherit.aes = FALSE, mapping = aes( x = !!as.name("variable"), ymin = !!as.name("min"), ymax = !!as.name("max"), group = !!as.name("variable") ) ) } if (boxplot) { p <- p + geom_boxplot(mapping = aes(group = .data$variable), alpha = 0.8) } if (!is.null(mapping2$linewidth)) { lineSize <- mapping2$linewidth } else { lineSize <- 0.5 } if (splineFactor > 0) { data.m$ggally_splineFactor <- splineFactor if (inherits(splineFactor, "AsIs")) { data.m <- bind_cols( reframe( data.m, .by = ".ID", across( everything(), function(x) rep(x, .data$ggally_splineFactor[1] / length(x)) ) ), mutate( reframe( data.m, .by = ".ID", data.frame(spline( .data$variable, .data$value, n = .data$ggally_splineFactor[1] )) ), spline.x = .data$x, spline.y = .data$y, .keep = "none" ) ) } else { data.m <- bind_cols( reframe( data.m, .by = ".ID", across(everything(), function(x) rep(x, .data$ggally_splineFactor[1])) ), mutate( reframe( data.m, .by = ".ID", data.frame(spline( .data$variable, .data$value, n = n() * .data$ggally_splineFactor[1] )) ), spline.x = .data$x, spline.y = .data$y, .keep = "none" ) ) } linexvar <- "spline.x" lineyvar <- "spline.y" if (alphaLinesIsCharacter) { p <- p + geom_line( aes( x = !!as.name(linexvar), y = !!as.name(lineyvar), alpha = !!as.name(alphaLines) ), linewidth = lineSize, data = data.m ) + scale_alpha(range = alphaRange) } else { p <- p + geom_line( aes(x = !!as.name(linexvar), y = !!as.name(lineyvar)), alpha = alphaLines, linewidth = lineSize, data = data.m ) } if (showPoints) { p <- p + geom_point(aes(x = as.numeric(.data$variable), y = .data$value)) } xAxisLabels <- levels(data.m$variable) # while continuous data, this makes it present like it's discrete p <- p + scale_x_continuous( breaks = seq_along(xAxisLabels), labels = xAxisLabels, minor_breaks = FALSE ) } else { if (alphaLinesIsCharacter) { p <- p + geom_line( aes(alpha = !!as.name(alphaLines)), linewidth = lineSize, data = data.m ) + scale_alpha(range = alphaRange) } else { # p <- p + geom_line(alpha = alphaLines, linewidth = lineSize) p <- p + geom_line(alpha = alphaLines) } if (showPoints) { p <- p + geom_point() } } if (title != "") { p <- p + labs(title = title) } p <- p + labs( x = "variable", y = "value" ) p } #' Get vector of variable types from data frame #' #' @keywords internal #' @param df data frame to extract variable types from #' @author Jason Crowley #' @return character vector with variable types, with names corresponding to #' the variable names from df column_is_character <- function(df) { x <- unlist(lapply(unclass(df), is.character)) names(x)[x] } #' @rdname column_is_character column_is_factor <- function(df) { x <- unlist(lapply(unclass(df), is.factor)) names(x)[x] } #' Find order of variables #' #' Find order of variables based on a specified scagnostic measure #' by maximizing the index values of that measure along the path. #' #' @param scag \code{scagnostics} object #' @param vars character vector of the variables to be ordered #' @param measure scagnostics measure to order according to #' @author Barret Schloerke #' @return character vector of variable ordered according to the given #' scagnostic measure scag_order <- function(scag, vars, measure) { scag <- sort(scag[measure, ], decreasing = TRUE) scagNames <- names(scag) # retrieve all names. assume name doesn't contain a space nameLocs <- regexec("^([^ ]+) \\* ([^ ]+)$", scagNames) colNames <- lapply(seq_along(nameLocs), function(i) { nameLoc <- nameLocs[[i]] scagName <- scagNames[[i]] # retrieve the column name from "FIRSTNAME * SECONDNAME" substr( rep(scagName, 2), nameLoc[-1], nameLoc[-1] + attr(nameLoc, "match.length")[-1] - 1 ) }) ret <- c() colNamesLength <- length(colNames) colNameValues <- unlist(colNames) for (i in seq_along(colNames)) { cols <- colNames[[i]] colsUsed <- cols %in% ret # if none of the columns have been added... if (colsUsed[1] == FALSE && colsUsed[2] == FALSE) { # find out which column comes next in the set, append that one first if (i < colNamesLength) { remainingColumns <- colNameValues[(2 * (i + 1)):(2 * colNamesLength)] col1Pos <- which.min(cols[1] == remainingColumns) col2Pos <- which.min(cols[2] == remainingColumns) if (col2Pos < col1Pos) { cols <- rev(cols) } ret <- append(ret, cols) } else { # nothing left in set, append both ret <- append(ret, cols) } # if only the first hasn't been added... } else if (colsUsed[1] == FALSE) { ret <- append(ret, cols[1]) # if only the second hasn't been added... } else if (colsUsed[2] == FALSE) { ret <- append(ret, cols[2]) } } if (length(ret) != length(vars)) { cli::cli_abort(c( "Could not compute a correct ordering: {length(vars) - length(ret)} values are missing.", "Missing: {toString(vars[!(vars %in% ret)])}" )) } return(ret) } #' Order axis variables #' #' Order axis variables by separation between one class and the rest #' (most separation to least). #' #' @param classVar class variable (vector from original dataset) #' @param axisVars variables to be plotted as axes (data frame) #' @param specClass character string matching to level of \code{classVar}; instead #' of looking for separation between any class and the rest, will only look for #' separation between this class and the rest #' @author Jason Crowley #' @importFrom stats lm #' @return character vector of names of axisVars ordered such that the first #' variable has the most separation between one of the classes and the rest, and #' the last variable has the least (as measured by F-statistics from an ANOVA) singleClassOrder <- function(classVar, axisVars, specClass = NULL) { if (!is.null(specClass)) { # for when user is interested in ordering by variation between one class and # the rest...will add this later } else { var.names <- colnames(axisVars) class.names <- levels(classVar) f.stats <- matrix( NA, nrow = length(class.names), ncol = length(var.names), dimnames = list(class.names, var.names) ) for (i in 1:length(class.names)) { f.stats[i, ] <- apply(axisVars, 2, function(x) { return(summary(lm( x ~ as.factor(classVar == class.names[i]) ))$fstatistic[1]) }) } var.maxF <- apply(f.stats, 2, max) return(names(var.maxF)[order(var.maxF, decreasing = TRUE)]) } } #' Sample skewness #' #' Calculate the sample skewness of a vector #' while ignoring missing values. #' #' @param x numeric vector #' @author Jason Crowley #' @return sample skewness of \code{x} skewness <- function(x) { x <- x[!is.na(x)] xbar <- mean(x) n <- length(x) skewness <- (1 / n) * sum((x - xbar)^3) / ((1 / n) * sum((x - xbar)^2))^(3 / 2) return(skewness) } GGally/R/data-twitter_spambots.R0000644000176200001440000000141614526737233016314 0ustar liggesusers#' Twitter spambots #' #' A network of spambots found on Twitter as part of a data mining project. #' #' Each node of the network is identified by the Twitter screen name of the #' account and further carries five vertex attributes: #' #' @details \itemize{ #' \item location user's location, as provided by the user #' \item lat latitude, based on the user's location #' \item lon longitude, based on the user's location #' \item followers number of Twitter accounts that follow this account #' \item friends number of Twitter accounts followed by the account #' } #' #' @docType data #' @author Amos Elberg #' @keywords datasets #' @name twitter_spambots #' @usage data(twitter_spambots) #' @format An object of class \code{network} with 120 edges and 94 vertices. NULL GGally/R/data-baseball.R0000644000176200001440000000255214526737217014453 0ustar liggesusers#' Yearly batting records for all major league baseball players #' #' This data frame contains batting statistics for a subset of players #' collected from \url{http://www.baseball-databank.org/}. There are a total #' of 21,699 records, covering 1,228 players from 1871 to 2007. Only players #' with more 15 seasons of play are included. #' #' @section Variables: #' Variables: #' \itemize{ #' \item id, unique player id #' \item year, year of data #' \item stint #' \item team, team played for #' \item lg, league #' \item g, number of games #' \item ab, number of times at bat #' \item r, number of runs #' \item h, hits, times reached base because of a batted, fair ball without #' error by the defense #' \item X2b, hits on which the batter reached second base safely #' \item X3b, hits on which the batter reached third base safely #' \item hr, number of home runs #' \item rbi, runs batted in #' \item sb, stolen bases #' \item cs, caught stealing #' \item bb, base on balls (walk) #' \item so, strike outs #' \item ibb, intentional base on balls #' \item hbp, hits by pitch #' \item sh, sacrifice hits #' \item sf, sacrifice flies #' \item gidp, ground into double play #' } #' @docType data #' @name baseball #' @usage baseball #' @format A 21699 x 22 data frame #' @references \url{http://www.baseball-databank.org/} #' @keywords datasets "baseball" GGally/R/ggcoef.R0000644000176200001440000001043215047655266013227 0ustar liggesusers#' Model coefficients with \pkg{broom} and \pkg{ggplot2} #' #' Plot the coefficients of a model with \pkg{broom} and \pkg{ggplot2}. #' For an updated and improved version, see [ggcoef_model()]. #' #' @param x a model object to be tidied with [broom::tidy()] or a data frame (see Details) #' @param mapping default aesthetic mapping #' @param conf.int display confidence intervals as error bars? #' @param conf.level level of confidence intervals (passed to [broom::tidy()] #' if \code{x} is not a data frame) #' @param exponentiate if \code{TRUE}, x-axis will be logarithmic (also passed to [broom::tidy()] #' if \code{x} is not a data frame) #' @param exclude_intercept should the intercept be excluded from the plot? #' @param vline print a vertical line? #' @param vline_intercept \code{xintercept} for the vertical line. #' \code{"auto"} for \code{x = 0} (or \code{x = 1} if \code{exponentiate} is \code{TRUE}) #' @param vline_color color of the vertical line #' @param vline_linetype line type of the vertical line #' @param vline_size size of the vertical line #' @param errorbar_color color of the error bars #' @param errorbar_height height of the error bars #' @param errorbar_linetype line type of the error bars #' @param errorbar_size size of the error bars #' @param sort \code{"none"} (default) do not sort, \code{"ascending"} sort by increasing coefficient value, or \code{"descending"} sort by decreasing coefficient value #' @param ... additional arguments sent to [ggplot2::geom_point()] #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' library(broom) #' reg <- lm(Sepal.Length ~ Sepal.Width + Petal.Length + Petal.Width, data = iris) #' p_(ggcoef(reg)) #' \donttest{ #' d <- as.data.frame(Titanic) #' reg2 <- glm(Survived ~ Sex + Age + Class, family = binomial, data = d, weights = d$Freq) #' ggcoef(reg2, exponentiate = TRUE) #' ggcoef( #' reg2, #' exponentiate = TRUE, exclude_intercept = TRUE, #' errorbar_height = .2, color = "blue", sort = "ascending" #' ) #' } #' @export ggcoef <- function( x, mapping = aes(!!as.name("estimate"), !!as.name("term")), conf.int = TRUE, conf.level = 0.95, exponentiate = FALSE, exclude_intercept = FALSE, vline = TRUE, vline_intercept = "auto", vline_color = "gray50", vline_linetype = "dotted", vline_size = 1, errorbar_color = "gray25", errorbar_height = 0, errorbar_linetype = "solid", errorbar_size = .5, sort = c("none", "ascending", "descending"), ... ) { if (!is.data.frame(x)) { rlang::check_installed("broom") x <- broom::tidy( x, conf.int = conf.int, conf.level = conf.level, exponentiate = exponentiate ) } if (!("term" %in% names(x))) { cli::cli_abort("{.arg x} doesn't contain a column names {.val term}.") } if (!("estimate" %in% names(x))) { cli::cli_abort("{.arg x} doesn't contain a column names {.val estimate}.") } if (exclude_intercept) { x <- x[x$term != "(Intercept)", ] } sort <- match.arg(sort) if (sort != "none") { x$term <- as.factor(x$term) if (sort == "ascending") { new_order <- order(x$estimate, decreasing = FALSE) } else { new_order <- order(x$estimate, decreasing = TRUE) } x$term <- as.character(x$term) x$term <- factor(x$term, levels = x$term[new_order]) } p <- ggplot(x, mapping = mapping) if (vline) { if (exponentiate) { if (vline_intercept == "auto") { vline_intercept <- 1 } p <- p + geom_vline( xintercept = vline_intercept, color = vline_color, linetype = vline_linetype, linewidth = vline_size ) + scale_x_log10() } else { if (vline_intercept == "auto") { vline_intercept <- 0 } p <- p + geom_vline( xintercept = vline_intercept, color = vline_color, linetype = vline_linetype, linewidth = vline_size ) } } if (conf.int && "conf.low" %in% names(x) && "conf.high" %in% names(x)) { p <- p + geom_errorbar( aes(xmin = !!as.name("conf.low"), xmax = !!as.name("conf.high")), color = errorbar_color, width = errorbar_height, linetype = errorbar_linetype, linewidth = errorbar_size ) } p + geom_point(...) } GGally/R/ggpairs_internal_plots.R0000644000176200001440000002164215047655266016553 0ustar liggesusers#' Wrap a function with different parameter values #' #' Wraps a function with the supplied parameters to force different default behavior. This is useful for functions that are supplied to ggpairs. It allows you to change the behavior of one function, rather than creating multiple functions with different parameter settings. #' #' \code{wrap} is identical to \code{wrap_fn_with_params}. These function take the new parameters as arguments. #' #' \code{wrapp} is identical to \code{wrap_fn_with_param_arg}. These functions take the new parameters as a single list. #' #' The \code{params} and \code{fn} attributes are there for debugging purposes. If either attribute is altered, the function must be re-wrapped to have the changes take effect. #' #' @param funcVal function that the \code{params} will be applied to. The function should follow the api of \code{function(data, mapping, ...)\{\}}. \code{funcVal} is allowed to be a string of one of the \code{ggally_NAME} functions, such as \code{"points"} for \code{ggally_points} or \code{"facetdensity"} for \code{ggally_facetdensity}. #' @param ... named parameters to be supplied to \code{wrap_fn_with_param_arg} #' @param params named vector or list of parameters to be applied to the \code{funcVal} #' @param funcArgName name of function to be displayed #' @return a \code{function(data, mapping, ...)\{\}} that will wrap the original function with the parameters applied as arguments #' @export #' @rdname wrap #' @examples #' # small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' # example function that prints 'val' #' fn <- function(data, mapping, val = 2) { #' print(val) #' } #' fn(data = NULL, mapping = NULL) # 2 #' #' # wrap function to change default value 'val' to 5 instead of 2 #' wrapped_fn1 <- wrap(fn, val = 5) #' wrapped_fn1(data = NULL, mapping = NULL) # 5 #' # you may still supply regular values #' wrapped_fn1(data = NULL, mapping = NULL, val = 3) # 3 #' #' # wrap function to change 'val' to 5 using the arg list #' wrapped_fn2 <- wrap_fn_with_param_arg(fn, params = list(val = 5)) #' wrapped_fn2(data = NULL, mapping = NULL) # 5 #' #' # change parameter settings in ggpairs for a particular function #' ## Goal output: #' regularPlot <- ggally_points( #' iris, #' ggplot2::aes(Sepal.Length, Sepal.Width), #' size = 5, color = "red" #' ) #' p_(regularPlot) #' #' # Wrap ggally_points to have parameter values size = 5 and color = 'red' #' w_ggally_points <- wrap(ggally_points, size = 5, color = "red") #' wrappedPlot <- w_ggally_points( #' iris, #' ggplot2::aes(Sepal.Length, Sepal.Width) #' ) #' p_(wrappedPlot) #' #' # Double check the aes parameters are the same for the geom_point layer #' identical(regularPlot$layers[[1]]$aes_params, wrappedPlot$layers[[1]]$aes_params) #' #' # Use a wrapped function in ggpairs #' pm <- ggpairs(iris, 1:3, lower = list(continuous = wrap(ggally_points, size = 5, color = "red"))) #' p_(pm) #' pm <- ggpairs(iris, 1:3, lower = list(continuous = w_ggally_points)) #' p_(pm) wrap_fn_with_param_arg <- function( funcVal, params = NULL, funcArgName = deparse(substitute(funcVal)) ) { if (missing(funcArgName)) { fnName <- attr(funcVal, "name") if (!is.null(fnName)) { funcArgName <- fnName } } if (!is.null(params)) { if (is.vector(params)) { params <- as.list(params) } if (length(params) > 0) { if (!is.list(params)) { cli::cli_abort( "{.arg params} must be a named list, named vector, or {.val NULL}." ) } if (is.null(names(params))) { cli::cli_abort( "{.arg params} must be a named list, named vector, or {.val NULL}." ) } if (any(nchar(names(params)) == 0)) { cli::cli_abort( "{.arg params} must be a named list, named vector, or {.val NULL}." ) } } } if (mode(funcVal) == "character") { if (missing(funcArgName)) { funcArgName <- str_c("ggally_", funcVal) } tryCatch( { funcVal <- get( str_c("ggally_", funcVal), mode = "function" ) }, error = function(e) { cli::cli_abort(c( "Error retrieving `GGally` function.", "Please provide a string such as {.val points} for {.fn ggally_points}", "For a list of all predefined functions, check out `vig_ggally(\"ggally_plots\")`", "A custom function may be supplied directly: {.code wrap(my_fn, param = val)}", "Function provided: {.fn {funcVal}}" )) } ) } allParams <- attr(funcVal, "params") %||% list() allParams[names(params)] <- params original_fn <- funcVal ret_fn <- function(data, mapping, ...) { allParams$data <- data allParams$mapping <- mapping argsList <- list(...) allParams[names(argsList)] <- argsList rlang::inject(original_fn(!!!allParams)) } class(ret_fn) <- "ggmatrix_fn_with_params" attr(ret_fn, "name") <- as.character(funcArgName) attr(ret_fn, "params") <- allParams attr(ret_fn, "fn") <- original_fn ret_fn } #' @export #' @rdname wrap wrapp <- wrap_fn_with_param_arg #' @export #' @rdname wrap wrap <- function(funcVal, ..., funcArgName = deparse(substitute(funcVal))) { if (missing(funcArgName)) { fnName <- attr(funcVal, "name") if (!is.null(fnName)) { funcArgName <- fnName } else if (is.character(funcVal)) { funcArgName <- str_c("ggally_", funcVal) } } params <- list(...) if (length(params) > 0) { if (is.null(names(params))) { cli::cli_abort("all parameters must be named arguments") } if (any(nchar(names(params)) == 0)) { cli::cli_abort("all parameters must be named arguments") } } wrap_fn_with_param_arg(funcVal, params = params, funcArgName = funcArgName) } #' @export #' @rdname wrap wrap_fn_with_params <- wrap #' @export as.character.ggmatrix_fn_with_params <- function(x, ...) { params <- attr(x, "params") fnName <- attr(x, "name") if (length(params) == 0) { txt <- str_c("wrap: '", fnName, "'") } else { txt <- str_c( "wrap: '", attr(x, "name"), "'; params: ", mapping_as_string(params) ) } txt } make_ggmatrix_plot_obj <- function( fn, mapping = ggplot2::aes(), dataPos = 1, gg = NULL ) { # nonCallVals <- which(lapply(mapping, mode) == "call") # if (length(nonCallVals) > 0) { # nonCallNames <- names(mapping)[nonCallVals] # browser() # stop( # paste( # "variables: ", # paste(shQuote(nonCallNames, type = "cmd"), sep = ", "), # " have non standard format: ", # paste(shQuote(unlist(mapping[nonCallVals]), type = "cmd"), collapse = ", "), # ". Please rename the columns or make a new column.", # sep = "" # ) # ) # } ret <- list( fn = fn, mapping = mapping, dataPos = dataPos, gg = gg ) class(ret) <- "ggmatrix_plot_obj" ret } blank_plot_string <- function() { "PM; (blank)" } mapping_as_string <- function(mapping) { str_c( "c(", str_c(names(mapping), as.character(mapping), sep = " = ", collapse = ", "), ")" ) } #' @export as.character.ggmatrix_plot_obj <- function(x, ...) { hasGg <- (!is.null(x$gg)) mappingTxt <- mapping_as_string(x$mapping) fnTxt <- ifelse( inherits(x$fn, "ggmatrix_fn_with_params"), as.character(x$fn), "custom_function" ) if (inherits(x$fn, "ggmatrix_fn_with_params")) { if (attr(x$fn, "name") %in% c("ggally_blank", "ggally_blankDiag")) { return(blank_plot_string()) } } str_c( "PM", "; aes: ", mappingTxt, "; fn: {", fnTxt, "}", # "; dataPos: ", x$dataPos, "; gg: ", as.character(hasGg) ) } #' \code{\link{ggmatrix}} structure #' #' View the condensed version of the \code{\link{ggmatrix}} object. The attribute "class" is ALWAYS altered to "_class" to avoid recursion. #' #' @param object \code{\link{ggmatrix}} object to be viewed #' @param ... passed on to the default \code{str} method #' @param raw boolean to determine if the plots should be converted to text or kept as original objects #' @importFrom utils str #' @name str.ggmatrix method(str, ggmatrix) <- function(object, ..., raw = FALSE) { if (isTRUE(raw)) { # S7's str method NextMethod() return() } matched_call <- rlang::call_match( sys.call(), function(object, ..., raw = FALSE) {} ) objName <- rlang::call_args(matched_call)$object obj <- convert(object, class_list) cat(str_c( "\nCustom str.ggmatrix output: \nTo view original object use ", "'str(", objName, ", raw = TRUE)'\n\n" )) obj$plots <- lapply(obj$plots, function(plotObj) { if (ggplot2::is_ggplot(plotObj)) { str_c( "PM; ggplot2 object; mapping: ", mapping_as_string(plotObj$mapping) ) } else if (inherits(plotObj, "ggmatrix_plot_obj")) { as.character(plotObj) } else { plotObj } }) attr(obj, "_class") <- attr(obj, "class") class(obj) <- NULL str(obj, ...) } GGally/R/ggpairs_add.R0000644000176200001440000002755115047655270014246 0ustar liggesusersadd_gg_info <- function(p, gg) { if (!is.null(gg)) { if (!is.null(gg$theme)) { p <- p + gg$theme } if (!is.null(gg$labs)) { p <- p + gg$labs } } p } add_labels_to_ggmatrix <- function(e1, e2) { label_names <- names(e2) if ("x" %in% label_names) { e1$xlab <- e2$x } if ("y" %in% label_names) { e1$ylab <- e2$y } if ("title" %in% label_names) { e1$title <- e2$title } non_ggmatrix_labels <- label_names[!label_names %in% c("x", "y", "title")] if (length(non_ggmatrix_labels) > 0) { if (is.null(e1$gg)) { e1$gg <- list() } if (is.null(e1$gg$labs)) { e1$gg$labs <- labs() } e1$gg$labs[non_ggmatrix_labels] <- e2[non_ggmatrix_labels] } e1 } add_theme_to_ggmatrix <- function(e1, e2) { if (is.null(e1$gg)) { e1$gg <- list() } # Get the name of what was passed in as e2, and pass along so that it # can be displayed in error messages # e2name <- deparse(substitute(e2)) if (is.null(e1$gg$theme)) { e1$gg$theme <- e2 } else { # calls ggplot2 add method and stores the result in gg e1$gg$theme <- e1$gg$theme + e2 } e1 } #' Modify a \code{\link{ggmatrix}} object by adding an \pkg{ggplot2} object to all plots #' #' This operator allows you to add \pkg{ggplot2} objects to a \code{\link{ggmatrix}} object. #' #' If the first object is an object of class \code{\link{ggmatrix}}, you can add #' the following types of objects, and it will return a modified \pkg{ggplot2} #' object. #' #' \itemize{ ###### \item \code{data.frame}: replace current data.frame ###### (must use \code{%+%}) ###### \item \code{uneval}: replace current aesthetics ###### \item \code{layer}: add new layer #' \item \code{theme}: update plot theme #' \item \code{scale}: replace current scale #' \item \code{coord}: override current coordinate system ###### \item \code{facet}: override current coordinate faceting #' } #' #' The \code{+} operator completely replaces elements #' with elements from e2. #' #' @param e1 An object of class \code{\link{ggnostic}} or \code{ggplot} #' @param e2 A component to add to \code{e1} #' @export #' @inheritParams ggmatrix_location #' @details #' \code{add_to_ggmatrix} gives you more control to modify #' only some subplots. This function may be replaced and/or removed in the future. \Sexpr[results=rd, stage=render]{lifecycle::badge("experimental")} #' @seealso \code{\link{ggmatrix_location}} #' @examples #' # small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' data(tips) #' #' pm <- ggpairs(tips[, 2:4], ggplot2::aes(color = sex)) #' ## change to black and white theme #' pm + ggplot2::theme_bw() #' ## change to linedraw theme #' p_(pm + ggplot2::theme_linedraw()) #' ## change to custom theme #' p_(pm + ggplot2::theme(panel.background = ggplot2::element_rect(fill = "lightblue"))) #' ## add a list of information #' extra <- list(ggplot2::theme_bw(), ggplot2::labs(caption = "My caption!")) #' p_(pm + extra) #' #' ## modify scale #' p_(pm + scale_fill_brewer(type = "qual")) #' ## only first row #' p_(add_to_ggmatrix(pm, scale_fill_brewer(type = "qual"), rows = 1:2)) #' ## only second col #' p_(add_to_ggmatrix(pm, scale_fill_brewer(type = "qual"), cols = 2:3)) #' ## only to upper triangle of plot matrix #' p_(add_to_ggmatrix( #' pm, #' scale_fill_brewer(type = "qual"), #' location = "upper" #' )) add_to_ggmatrix <- function( e1, e2, location = NULL, rows = NULL, cols = NULL ) { if (!is_ggmatrix(e1)) { cli::cli_abort("{.arg e1} should be a {.fn ggmatrix}.") } if (!is_ggproto(e2)) { cli::cli_abort("{.arg e2} should be a {.cls ggproto} object.") } pm <- e1 gg <- e2 loc <- ggmatrix_location(pm, location = location, rows = rows, cols = cols) row_vals <- loc$row col_vals <- loc$col for (i in seq_along(row_vals)) { row <- row_vals[i] col <- col_vals[i] # wrap in try to not let one plot fail, but also print the error try({ pm[row, col] <- pm[row, col] + gg }) } pm } #' \code{\link{ggmatrix}} plot locations #' #' \lifecycle{experimental} #' #' Convert many types of location values to a consistent \code{data.frame} of \code{row} and \code{col} values. #' #' @param pm \code{\link{ggmatrix}} plot object #' @param location \describe{ #' \item{\code{"all"}, \code{TRUE}}{All row and col combinations} #' \item{\code{"none"}}{No row and column combinations} #' \item{\code{"upper"}}{Locations where the column value is higher than the row value} #' \item{\code{"lower"}}{Locations where the row value is higher than the column value} #' \item{\code{"diag"}}{Locations where the column value is equal to the row value} #' \item{\code{matrix} or \code{data.frame}}{ #' \code{matrix} values will be converted into \code{data.frame}s. #' \itemize{ #' \item A \code{data.frame} with the exact column names \code{c("row", "col")} #' \item A \code{data.frame} with the number of rows and columns matching the plot matrix object provided. Each cell will be tested for a "truthy" value to determine if the location should be kept. #' } #' } #' } #' @param rows numeric vector of the rows to be used. Will be used with \code{cols} if \code{location} is \code{NULL} #' @param cols numeric vector of the cols to be used. Will be used with \code{rows} if \code{location} is \code{NULL} #' @return Data frame with columns \code{c("row", "col")} containing locations for the plot matrix #' @export #' @examples #' pm <- ggpairs(tips, 1:3) #' #' # All locations #' ggmatrix_location(pm, location = "all") #' ggmatrix_location(pm, location = TRUE) #' #' # No locations #' ggmatrix_location(pm, location = "none") #' #' # "upper" triangle locations #' ggmatrix_location(pm, location = "upper") #' #' # "lower" triangle locations #' ggmatrix_location(pm, location = "lower") #' #' # "diag" locations #' ggmatrix_location(pm, location = "diag") #' #' # specific rows #' ggmatrix_location(pm, rows = 2) #' #' # specific columns #' ggmatrix_location(pm, cols = 2) #' #' # row and column combinations #' ggmatrix_location(pm, rows = c(1, 2), cols = c(1, 3)) #' #' # matrix locations #' mat <- matrix(TRUE, ncol = 3, nrow = 3) #' mat[1, 1] <- FALSE #' locs <- ggmatrix_location(pm, location = mat) #' ## does not contain the 1, 1 cell #' locs #' #' # Use the output of a prior ggmatrix_location #' ggmatrix_location(pm, location = locs) ggmatrix_location <- function( pm, location = NULL, rows = NULL, cols = NULL ) { if (!is_ggmatrix(pm)) { cli::cli_abort("{.arg pm} should be a {.fn ggmatrix}.") } if (!is.null(location)) { if ( is.logical(location) && !(is.matrix(location) || is.data.frame(location)) ) { if (length(location) != 1) { cli::cli_abort("{.arg location} logical value must be of length 1") } location <- if (isTRUE(location)) { "all" } else { cli::cli_warn( "Not {.code TRUE} logical {.arg location} value. Setting to {.code 'none'}" ) "none" } } if (is.character(location)) { location <- match.arg( location, c("all", "upper", "lower", "diag", "none"), several.ok = FALSE ) locs <- expand.grid(row = seq_len(pm$nrow), col = seq_len(pm$ncol)) location <- switch( location, "all" = locs, "none" = subset(locs, FALSE), "diag" = subset(locs, row == col), "upper" = subset(locs, col > row), "lower" = subset(locs, col < row), cli::cli_abort("{location} not implemented") ) } else { if (is.matrix(location)) { location <- as.data.frame(location) } if (is.data.frame(location)) { if (!identical(c("row", "col"), colnames(location))) { # using data.frame of locations as truthy vals if (ncol(location) != pm$ncol) { cli::cli_abort( "{.arg location} provided does not have the same size of columns" ) } if (nrow(location) != pm$nrow) { cli::cli_abort( "{.arg location} provided does not have the same size of rows" ) } # turn wide matrix into a tall data.frame of row/col combos tmp_locs <- data.frame(row = numeric(0), col = numeric(0)) for (i in seq_len(nrow(location))) { for (j in seq_len(ncol(location))) { val <- location[i, j] if (val) { tmp_locs[nrow(tmp_locs) + 1, ] <- list(row = i, col = j) } } } location <- tmp_locs } # end (location is data.frame) } # end (location not character) } # end (location not null) } else { # location is null if (is.null(rows)) { rows <- seq_len(pm$nrow) } if (!is.numeric(rows)) { cli::cli_abort("{.arg rows} must be numeric") } if (is.null(cols)) { cols <- seq_len(pm$ncol) } if (!is.numeric(cols)) { cli::cli_abort("{.arg cols} must be numeric") } location <- expand.grid(row = rows, col = cols) } # location will be a 2d data.frame with colnames of `'row'` and `'col'` locs <- as.data.frame(location) if (ncol(locs) < 2) { utils::str(locs) cli::cli_abort("not enough columns to inspect for a location") } if (!all(c("row", "col") %in% colnames(locs))) { cli::cli_abort("invalid location row / col object") } row <- locs$row if (any(row > pm$nrow) || any(row <= 0) || any(is.na(row))) { cli::cli_abort(c( "{.code row} must be non-NA / positive numeric values {.code <= pm$nrow}", "*" = "{.code pm$nrow}: {.val {pm$nrow}}", "*" = "row: {.val {row}}" )) } col <- locs$col if (any(col > pm$ncol) || any(col <= 0) || any(is.na(col))) { cli::cli_abort(c( "{.code col} must be non-NA / positive numeric values {.code <= pm$ncol}", "*" = "{.code pm$ncol}: {.val {pm$ncol}}", "*" = "{.code col}: {.val {col}}" )) } # typical case return( locs[, c("row", "col")] ) } add_list_to_ggmatrix <- function(e1, e2) { for (item in e2) { e1 <- e1 + item } e1 } #' Check if an object is a ggmatrix #' #' @param x An object to check #' @return Logical value indicating if the object is a `ggmatrix` #' @export #' @examples #' is_ggmatrix(ggpairs(mtcars)) #' is_ggmatrix(ggplot2::ggplot()) is_ggmatrix <- function(x) { inherits(x, "ggmatrix") } # ------------------------- #' @rawNamespace if (utils::packageVersion("ggplot2") < "3.5.2.9001") S3method("+",ggmatrix) NULL #' @exportS3Method NULL "+.ggmatrix" <- function(e1, e2) { if (!is_ggmatrix(e1)) { cli::cli_abort("{.arg e1} should be a {.fn ggmatrix}.") } if (inherits(e2, c("labels", "ggplot2::labels"))) { add_labels_to_ggmatrix(e1, e2) } else if (is_theme(e2)) { add_theme_to_ggmatrix(e1, e2) } else if (is.list(e2)) { add_list_to_ggmatrix(e1, e2) } else if (is_ggproto(e2)) { add_to_ggmatrix(e1, e2) } else { cli::cli_abort(c( "{.fn ggmatrix} does not know how to add objects that do not have class {.cls theme}, {.cls labels} or {.cls ggproto}.", i = "Received object with class: {.cls {class(e2)}}" )) } } if (utils::packageVersion("ggplot2") >= "3.5.2.002") { class_ggproto <- ggplot2::class_ggproto class_theme <- ggplot2::class_theme class_labels <- ggplot2::class_labels method(`+`, list(ggmatrix, class_labels)) <- function(e1, e2) { add_labels_to_ggmatrix(e1, e2) } method(`+`, list(ggmatrix, class_theme)) <- function(e1, e2) { add_theme_to_ggmatrix(e1, e2) } method(`+`, list(ggmatrix, class_ggproto)) <- function(e1, e2) { add_to_ggmatrix(e1, e2) } method(`+`, list(ggmatrix, class_list)) <- function(e1, e2) { add_list_to_ggmatrix(e1, e2) } method(`+`, list(ggmatrix, class_any)) <- function(e1, e2) { # Fallback support for ggplot2 <= 3.5.2 `+.ggmatrix`(e1, e2) } } GGally/R/ggtable.R0000644000176200001440000000465715023051677013404 0ustar liggesusers#' Cross-tabulated tables of discrete variables #' #' \code{ggtable} is a variant of \code{\link{ggduo}} for quick #' cross-tabulated tables of discrete variables. #' #' @param data dataset to be used, can have both categorical and #' numerical variables #' @param columnsX,columnsY names or positions of which columns are used to make plots. Defaults to all columns. #' @param cells Which statistic should be displayed in table cells? #' @param fill Which statistic should be used for filling table cells? #' @param mapping additional aesthetic to be used, for example to indicate #' weights (see examples) #' @param ... additional arguments passed to \code{\link{ggduo}} (see examples) #' @author Joseph Larmarange #' @export #' @examples #' # small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' data(tips) #' p_(ggtable(tips, "smoker", c("day", "time", "sex"))) #' #' # displaying row proportions #' p_(ggtable(tips, "smoker", c("day", "time", "sex"), cells = "row.prop")) #' #' # filling cells with standardized residuals #' p_(ggtable(tips, "smoker", c("day", "time", "sex"), fill = "std.resid", legend = 1)) #' #' # if continuous variables are provided, just displaying some summary statistics #' p_(ggtable(tips, c("smoker", "total_bill"), c("day", "time", "sex", "tip"))) #' #' # specifying weights #' d <- as.data.frame(Titanic) #' p_(ggtable( #' d, #' "Survived", #' c("Class", "Sex", "Age"), #' mapping = aes(weight = Freq), #' cells = "row.prop", #' fill = "std.resid" #' )) ggtable <- function( data, columnsX = 1:ncol(data), columnsY = 1:ncol(data), cells = c( "observed", "prop", "row.prop", "col.prop", "expected", "resid", "std.resid" ), fill = c("none", "std.resid", "resid"), mapping = NULL, ... ) { fill <- match.arg(fill) cells <- match.arg(cells) types <- list( discrete = wrapp(ggally_crosstable, list(cells = cells, fill = fill)), continuous = "cor", comboVertical = "summarise_by", comboHorizontal = "summarise_by" ) ggduo_args <- list(...) ggduo_args$data <- data ggduo_args$mapping <- mapping ggduo_args$types <- types ggduo_args$columnsX <- columnsX ggduo_args$columnsY <- columnsY if (!"xProportions" %in% names(ggduo_args)) { ggduo_args$xProportions <- "auto" } if (!"yProportions" %in% names(ggduo_args)) { ggduo_args$yProportions <- "auto" } p <- do.call(ggduo, ggduo_args) p } GGally/R/ggnet2.R0000644000176200001440000010554115047655266013171 0ustar liggesusers#' Network plot #' #' Function for plotting network objects using \pkg{ggplot2}, with additional control #' over graphical parameters that are not supported by the \code{\link{ggnet}} #' function. Please visit \url{https://github.com/briatte/ggnet} for the latest #' version of ggnet2, and \url{https://briatte.github.io/ggnet/} for a vignette #' that contains many examples and explanations. #' #' @export #' @param net an object of class \code{\link[network]{network}}, or any object #' that can be coerced to this class, such as an adjacency or incidence matrix, #' or an edge list: see \link[network]{edgeset.constructors} and #' \link[network]{network} for details. If the object is of class #' [igraph][igraph::igraph-package] and the #' [intergraph][intergraph::intergraph-package] package is installed, #' it will be used to convert the object: see #' \code{\link[intergraph]{asNetwork}} for details. #' @param mode a placement method from those provided in the #' \code{\link[sna]{sna}} package: see \link[sna:gplot.layout]{gplot.layout} for #' details. Also accepts the names of two numeric vertex attributes of #' \code{net}, or a matrix of numeric coordinates, in which case the first two #' columns of the matrix are used. #' Defaults to the Fruchterman-Reingold force-directed algorithm. #' @param layout.par options to be passed to the placement method, as listed in #' \link[sna]{gplot.layout}. #' Defaults to \code{NULL}. #' @param layout.exp a multiplier to expand the horizontal axis if node labels #' get clipped: see \link[scales]{expand_range} for details. #' Defaults to \code{0} (no expansion). #' @param alpha the level of transparency of the edges and nodes, which might be #' a single value, a vertex attribute, or a vector of values. #' Also accepts \code{"mode"} on bipartite networks (see 'Details'). #' Defaults to \code{1} (no transparency). #' @param color the color of the nodes, which might be a single value, a vertex #' attribute, or a vector of values. #' Also accepts \code{"mode"} on bipartite networks (see 'Details'). #' Defaults to \code{grey75}. #' @param shape the shape of the nodes, which might be a single value, a vertex #' attribute, or a vector of values. #' Also accepts \code{"mode"} on bipartite networks (see 'Details'). #' Defaults to \code{19} (solid circle). #' @param size the size of the nodes, in points, which might be a single value, #' a vertex attribute, or a vector of values. Also accepts \code{"indegree"}, #' \code{"outdegree"}, \code{"degree"} or \code{"freeman"} to size the nodes by #' their unweighted degree centrality (\code{"degree"} and \code{"freeman"} are #' equivalent): see \code{\link[sna]{degree}} for details. All node sizes must #' be strictly positive. #' Also accepts \code{"mode"} on bipartite networks (see 'Details'). #' Defaults to \code{9}. #' @param max_size the \emph{maximum} size of the node when \code{size} produces #' nodes of different sizes, in points. #' Defaults to \code{9}. #' @param na.rm whether to subset the network to nodes that are \emph{not} #' missing a given vertex attribute. If set to any vertex attribute of #' \code{net}, the nodes for which this attribute is \code{NA} will be removed. #' Defaults to \code{NA} (does nothing). #' @param palette the palette to color the nodes, when \code{color} is not a #' color value or a vector of color values. Accepts named vectors of color #' values, or if [RColorBrewer][RColorBrewer::RColorBrewer] is installed, any #' ColorBrewer palette name: see [RColorBrewer::brewer.pal()] and #' \url{https://colorbrewer2.org/} for details. #' Defaults to \code{NULL}, which will create an array of grayscale color values #' if \code{color} is not a color value or a vector of color values. #' @param alpha.palette the palette to control the transparency levels of the #' nodes set by \code{alpha} when the levels are not numeric values. #' Defaults to \code{NULL}, which will create an array of alpha transparency #' values if \code{alpha} is not a numeric value or a vector of numeric values. #' @param alpha.legend the name to assign to the legend created by #' \code{alpha} when its levels are not numeric values. #' Defaults to \code{NA} (no name). #' @param color.palette see \code{palette} #' @param color.legend the name to assign to the legend created by #' \code{palette}. #' Defaults to \code{NA} (no name). #' @param shape.palette the palette to control the shapes of the nodes set by #' \code{shape} when the shapes are not numeric values. #' Defaults to \code{NULL}, which will create an array of shape values if #' \code{shape} is not a numeric value or a vector of numeric values. #' @param shape.legend the name to assign to the legend created by #' \code{shape} when its levels are not numeric values. #' Defaults to \code{NA} (no name). #' @param size.palette the palette to control the sizes of the nodes set by #' \code{size} when the sizes are not numeric values. #' @param size.legend the name to assign to the legend created by #' \code{size}. #' Defaults to \code{NA} (no name). #' @param size.zero whether to accept zero-sized nodes based on the value(s) of #' \code{size}. #' Defaults to \code{FALSE}, which ensures that zero-sized nodes are still #' shown in the plot and its size legend. #' @param size.cut whether to cut the size of the nodes into a certain number of #' quantiles. Accepts \code{TRUE}, which tries to cut the sizes into quartiles, #' or any positive numeric value, which tries to cut the sizes into that many #' quantiles. If the size of the nodes do not contain the specified number of #' distinct quantiles, the largest possible number is used. #' See \code{\link[stats]{quantile}} and \code{\link[base]{cut}} for details. #' Defaults to \code{FALSE} (does nothing). #' @param size.min whether to subset the network to nodes with a minimum size, #' based on the values of \code{size}. #' Defaults to \code{NA} (preserves all nodes). #' @param size.max whether to subset the network to nodes with a maximum size, #' based on the values of \code{size}. #' Defaults to \code{NA} (preserves all nodes). #' @param label whether to label the nodes. If set to \code{TRUE}, nodes are #' labeled with their vertex names. If set to a vector that contains as many #' elements as there are nodes in \code{net}, nodes are labeled with these. If #' set to any other vector of values, the nodes are labeled only when their #' vertex name matches one of these values. #' Defaults to \code{FALSE} (no labels). #' @param label.alpha the level of transparency of the node labels, as a #' numeric value, a vector of numeric values, or as a vertex attribute #' containing numeric values. #' Defaults to \code{1} (no transparency). #' @param label.color the color of the node labels, as a color value, a vector #' of color values, or as a vertex attribute containing color values. #' Defaults to \code{"black"}. #' @param label.size the size of the node labels, in points, as a numeric value, #' a vector of numeric values, or as a vertex attribute containing numeric #' values. #' Defaults to \code{max_size / 2} (half the maximum node size), which defaults #' to \code{4.5}. #' @param label.trim whether to apply some trimming to the node labels. Accepts #' any function that can process a character vector, or a strictly positive #' numeric value, in which case the labels are trimmed to a fixed-length #' substring of that length: see \code{\link[base]{substr}} for details. #' Defaults to \code{FALSE} (does nothing). #' @param node.alpha see \code{alpha} #' @param node.color see \code{color} #' @param node.label see \code{label} #' @param node.shape see \code{shape} #' @param node.size see \code{size} #' @param edge.alpha the level of transparency of the edges. #' Defaults to the value of \code{alpha}, which defaults to \code{1}. #' @param edge.color the color of the edges, as a color value, a vector of color #' values, or as an edge attribute containing color values. #' Defaults to \code{"grey50"}. #' @param edge.lty the linetype of the edges, as a linetype value, a vector of #' linetype values, or as an edge attribute containing linetype values. #' Defaults to \code{"solid"}. #' @param edge.size the size of the edges, in points, as a numeric value, a #' vector of numeric values, or as an edge attribute containing numeric values. #' All edge sizes must be strictly positive. #' Defaults to \code{0.25}. #' @param edge.label the labels to plot at the middle of the edges, as a single #' value, a vector of values, or as an edge attribute. #' Defaults to \code{NULL} (no edge labels). #' @param edge.label.alpha the level of transparency of the edge labels, as a #' numeric value, a vector of numeric values, or as an edge attribute #' containing numeric values. #' Defaults to \code{1} (no transparency). #' @param edge.label.color the color of the edge labels, as a color value, a #' vector of color values, or as an edge attribute containing color values. #' Defaults to \code{label.color}, which defaults to \code{"black"}. #' @param edge.label.fill the background color of the edge labels. #' Defaults to \code{"white"}. #' @param edge.label.size the size of the edge labels, in points, as a numeric #' value, a vector of numeric values, or as an edge attribute containing numeric #' values. All edge label sizes must be strictly positive. #' Defaults to \code{max_size / 2} (half the maximum node size), which defaults #' to \code{4.5}. #' @param arrow.size the size of the arrows for directed network edges, in #' points. See \code{\link[grid]{arrow}} for details. #' Defaults to \code{0} (no arrows). #' @param arrow.gap a setting aimed at improving the display of edge arrows by #' plotting slightly shorter edges. Accepts any value between \code{0} and #' \code{1}, where a value of \code{0.05} will generally achieve good results #' when the size of the nodes is reasonably small. #' Defaults to \code{0} (no shortening). #' @param arrow.type the type of the arrows for directed network edges. See #' \code{\link[grid]{arrow}} for details. #' Defaults to \code{"closed"}. #' @param legend.size the size of the legend symbols and text, in points. #' Defaults to \code{9}. #' @param legend.position the location of the plot legend(s). Accepts all #' \code{legend.position} values supported by \code{\link[ggplot2]{theme}}. #' Defaults to \code{"right"}. #' @param ... other arguments passed to the \code{geom_text} object that sets #' the node labels: see \code{\link[ggplot2]{geom_text}} for details. #' @seealso \code{\link{ggnet}} in this package, #' \code{\link[sna]{gplot}} in the \code{\link[sna]{sna}} package, and #' \code{\link[network]{plot.network}} in the \code{\link[network]{network}} #' package #' @author Moritz Marbach and Francois Briatte, with help from Heike Hofmann, #' Pedro Jordano and Ming-Yu Liu #' @details The degree centrality measures that can be produced through the #' \code{size} argument will take the directedness of the network into account, #' but will be unweighted. To compute weighted network measures, see the #' \code{tnet} package by Tore Opsahl (\code{help("tnet", package = "tnet")}). #' #' The nodes of bipartite networks can be mapped to their mode by passing the #' \code{"mode"} argument to any of \code{alpha}, \code{color}, \code{shape} and #' \code{size}, in which case the nodes of the primary mode will be mapped as #' \code{"actor"}, and the nodes of the secondary mode will be mapped as #' \code{"event"}. #' @importFrom utils installed.packages #' @importFrom grDevices gray.colors #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' library(network) #' #' # random adjacency matrix #' x <- 10 #' ndyads <- x * (x - 1) #' density <- x / ndyads #' m <- matrix(0, nrow = x, ncol = x) #' dimnames(m) <- list(letters[1:x], letters[1:x]) #' m[row(m) != col(m)] <- runif(ndyads) < density #' m #' #' # random undirected network #' n <- network::network(m, directed = FALSE) #' n #' #' p_(ggnet2(n, label = TRUE)) #' p_(ggnet2(n, label = TRUE, shape = 15)) #' p_(ggnet2(n, label = TRUE, shape = 15, color = "black", label.color = "white")) #' #' # add vertex attribute #' x = network.vertex.names(n) #' x = ifelse(x %in% c("a", "e", "i"), "vowel", "consonant") #' n %v% "phono" = x #' #' p_(ggnet2(n, color = "phono")) #' p_(ggnet2(n, color = "phono", palette = c("vowel" = "gold", "consonant" = "grey"))) #' p_(ggnet2(n, shape = "phono", color = "phono")) #' #' if (require(RColorBrewer)) { #' #' # random groups #' n %v% "group" <- sample(LETTERS[1:3], 10, replace = TRUE) #' #' p_(ggnet2(n, color = "group", palette = "Set2")) #' #' } #' #' # random weights #' n %e% "weight" <- sample(1:3, network.edgecount(n), replace = TRUE) #' p_(ggnet2(n, edge.size = "weight", edge.label = "weight")) #' #' # edge arrows on a directed network #' p_(ggnet2(network(m, directed = TRUE), arrow.gap = 0.05, arrow.size = 10)) #' #' # Padgett's Florentine wedding data #' data(flo, package = "network") #' flo #' #' p_(ggnet2(flo, label = TRUE)) #' p_(ggnet2(flo, label = TRUE, label.trim = 4, vjust = -1, size = 3, color = 1)) #' p_(ggnet2(flo, label = TRUE, size = 12, color = "white")) ggnet2 <- function( net, mode = "fruchtermanreingold", layout.par = NULL, layout.exp = 0, alpha = 1, color = "grey75", shape = 19, size = 9, max_size = 9, na.rm = NA, palette = NULL, alpha.palette = NULL, alpha.legend = NA, color.palette = palette, color.legend = NA, shape.palette = NULL, shape.legend = NA, size.palette = NULL, size.legend = NA, size.zero = FALSE, size.cut = FALSE, size.min = NA, size.max = NA, label = FALSE, label.alpha = 1, label.color = "black", label.size = max_size / 2, label.trim = FALSE, node.alpha = alpha, node.color = color, node.label = label, node.shape = shape, node.size = size, edge.alpha = 1, edge.color = "grey50", edge.lty = "solid", edge.size = .25, edge.label = NULL, edge.label.alpha = 1, edge.label.color = label.color, edge.label.fill = "white", edge.label.size = max_size / 2, arrow.size = 0, arrow.gap = 0, arrow.type = "closed", legend.size = 9, legend.position = "right", ... ) { # -- packages ---------------------------------------------------------------- rlang::check_installed(c("network", "sna", "scales")) # -- conversion to network class --------------------------------------------- if ( inherits(net, "igraph") && "intergraph" %in% rownames(installed.packages()) ) { net = intergraph::asNetwork(net) } else if (inherits(net, "igraph")) { cli::cli_abort( "install the {.fn intergraph} package to use {.pkg igraph} objects with {.fn ggnet2}" ) } if (!network::is.network(net)) { net = try(network::network(net), silent = TRUE) } if (!network::is.network(net)) { cli::cli_abort("could not coerce {.arg net} to a {.pkg network} object") } # -- network functions ------------------------------------------------------- get_v = get("%v%", envir = getNamespace("network")) get_e = get("%e%", envir = getNamespace("network")) set_mode = function( x, mode = network::get.network.attribute(x, "bipartite") ) { c(rep("actor", mode), rep("event", n_nodes - mode)) } set_node = function(x, value, mode = TRUE) { if (is.null(x) || any(is.na(x)) || any(is.infinite(x)) || any(is.nan(x))) { cli::cli_abort("incorrect {value} value") } else if (is.numeric(x) && any(x < 0)) { cli::cli_abort("incorrect {value} value") } else if (length(x) == n_nodes) { x } else if (length(x) > 1) { cli::cli_abort("incorrect {value} length") } else if (any(x %in% v_attr)) { get_v(net, x) } else if (mode && identical(x, "mode") && is_bip) { set_mode(net) } else { x } } set_edge = function(x, value) { if (is.null(x) || any(is.na(x)) || any(is.infinite(x)) || any(is.nan(x))) { cli::cli_abort("incorrect {value} value") } else if (is.numeric(x) && any(x < 0)) { cli::cli_abort("incorrect {value} value") } else if (length(x) == n_edges) { x } else if (length(x) > 1) { cli::cli_abort("incorrect {value} length") } else if (any(x %in% e_attr)) { get_e(net, x) } else { x } } set_attr = function(x) { if (length(x) == n_nodes) { x } else if (length(x) > 1) { cli::cli_abort("incorrect coordinates length") } else if (!x %in% v_attr) { cli::cli_abort("vertex attribute {x} was not found") } else if (!is.numeric(get_v(net, x))) { cli::cli_abort("vertex attribute {x} is not numeric") } else { get_v(net, x) } } set_name = function(x, y) { z = length(x) == 1 && x %in% v_attr z = ifelse(is.na(y), z, y) z = ifelse(isTRUE(z), x, z) ifelse(is.logical(z), "", z) } set_size = function(x) { y = x + (0 %in% x) * !size.zero y = scales::rescale_max(y) y = scales::abs_area(max_size)(y) if (is.null(names(x))) { names(y) = x } else { names(y) = names(x) } y } is_one = function(x) length(unique(x)) == 1 is_col = function(x) all(is.numeric(x)) | all(network::is.color(x)) # -- network structure ------------------------------------------------------- n_nodes = network::network.size(net) n_edges = network::network.edgecount(net) v_attr = network::list.vertex.attributes(net) e_attr = network::list.edge.attributes(net) is_bip = network::is.bipartite(net) is_dir = ifelse(network::is.directed(net), "digraph", "graph") if (!is.numeric(arrow.size) || arrow.size < 0) { cli::cli_abort("incorrect {.arg arrow.size} value") } else if (arrow.size > 0 && is_dir == "graph") { cli::cli_warn("network is undirected; {.arg arrow.size} ignored") arrow.size = 0 } if (!is.numeric(arrow.gap) || arrow.gap < 0 || arrow.gap > 1) { cli::cli_abort("incorrect {.arg arrow.gap} value") } else if (arrow.gap > 0 && is_dir == "graph") { cli::cli_warn("network is undirected; {.arg arrow.gap} ignored") arrow.gap = 0 } if (network::is.hyper(net)) { cli::cli_abort("{.fn ggnet2} cannot plot hyper graphs") } if (network::is.multiplex(net)) { cli::cli_abort("{.fn ggnet2} cannot plot multiplex graphs") } if (network::has.loops(net)) { cli::cli_warn("{.fn ggnet2} does not know how to handle self-loops") } # -- check max_size ---------------------------------------------------------- x = max_size if (!is.numeric(x) || is.infinite(x) || is.nan(x) || x < 0) { cli::cli_abort("incorrect {.arg max_size} value") } # -- initialize dataset ------------------------------------------------------ data = data.frame( label = get_v(net, "vertex.names"), stringsAsFactors = FALSE ) data$alpha = set_node(node.alpha, "node.alpha") data$color = set_node(node.color, "node.color") data$shape = set_node(node.shape, "node.shape") data$size = set_node(node.size, "node.size") # -- node removal ------------------------------------------------------------ if (length(na.rm) > 1) { cli::cli_abort("incorrect {.arg na.rm} value") } else if (!is.na(na.rm)) { if (!na.rm %in% v_attr) { cli::cli_abort("vertex attribute {na.rm} was not found") } x = which(is.na(get_v(net, na.rm))) cli::cli_inform( "{.arg na.rm} removed {length(x)} nodes out of {nrow(data)}" ) if (length(x) > 0) { data = data[-x, ] network::delete.vertices(net, x) if (!nrow(data)) { cli::cli_warn("{.arg na.rm} removed all nodes; nothing left to plot") return(invisible(NULL)) } } } # -- weight methods ---------------------------------------------------------- x = size if ( length(x) == 1 && x %in% c("indegree", "outdegree", "degree", "freeman") ) { # prevent namespace conflict with igraph if ("package:igraph" %in% search()) { y = ifelse(is_dir == "digraph", "directed", "undirected") z = c( "indegree" = "in", "outdegree" = "out", "degree" = "all", "freeman" = "all" )[x] data$size = igraph::degree( igraph_graph_adjacency_matrix(as.matrix(net), mode = y), mode = z ) } else { data$size = sna::degree( net, gmode = is_dir, cmode = ifelse(x == "degree", "freeman", x) ) } size.legend = ifelse(is.na(size.legend), x, size.legend) } # -- weight thresholds ------------------------------------------------------- x = ifelse(is.na(size.min), 0, size.min) if (length(x) > 1 || !is.numeric(x) || is.infinite(x) || is.nan(x) || x < 0) { cli::cli_abort("incorrect {.arg size.min} value") } else if (x > 0 && !is.numeric(data$size)) { cli::cli_warn("{.arg node.size} is not numeric; {.arg size.min} ignored") } else if (x > 0) { x = which(data$size < x) cli::cli_inform( "{.arg size.min} removed {length(x)} nodes out of {nrow(data)}" ) if (length(x) > 0) { data = data[-x, ] network::delete.vertices(net, x) if (!nrow(data)) { cli::cli_warn("{.arg size.min} removed all nodes; nothing left to plot") return(invisible(NULL)) } } } x = ifelse(is.na(size.max), 0, size.max) if (length(x) > 1 || !is.numeric(x) || is.infinite(x) || is.nan(x) || x < 0) { cli::cli_abort("incorrect {.arg size.max} value") } else if (x > 0 && !is.numeric(data$size)) { cli::cli_warn("{.arg node.size} is not numeric; {.arg size.max} ignored") } else if (x > 0) { x = which(data$size > x) cli::cli_inform( "{.arg size.max} removed {length(x)} nodes out of {nrow(data)}" ) if (length(x) > 0) { data = data[-x, ] network::delete.vertices(net, x) if (!nrow(data)) { cli::cli_warn("{.arg size.max} removed all nodes; nothing left to plot") return(invisible(NULL)) } } } # -- weight quantiles -------------------------------------------------------- x = size.cut if (length(x) > 1 || is.null(x) || is.na(x) || is.infinite(x) || is.nan(x)) { cli::cli_abort("incorrect {.arg size.cut} value") } else if (isTRUE(x)) { x = 4 } else if (is.logical(x) && !x) { x = 0 } else if (!is.numeric(x)) { cli::cli_abort("incorrect {.arg size.cut} value") } if (x >= 1 && !is.numeric(data$size)) { cli::cli_warn("{.arg node.size} is not numeric; {.arg size.cut} ignored") } else if (x >= 1) { x = unique(quantile(data$size, probs = seq(0, 1, by = 1 / as.integer(x)))) if (length(x) > 1) { data$size = cut(data$size, unique(x), include.lowest = TRUE) } else { cli::cli_warn("{.arg node.size} is invariant; {.arg size.cut} ignored") } } # -- alpha palette ----------------------------------------------------------- if (!is.null(alpha.palette)) { x = alpha.palette } else if (is.factor(data$alpha)) { x = levels(data$alpha) } else { x = unique(data$alpha) } if (!is.null(names(x))) { y = unique(na.omit(data$alpha[!data$alpha %in% names(x)])) if (length(y) > 0) { cli::cli_abort("no {.arg alpha.palette} value for {y}") } } else if (is.factor(data$alpha) || !is.numeric(x)) { data$alpha = factor(data$alpha) x = scales::rescale_max(1:length(levels(data$alpha))) names(x) = levels(data$alpha) } alpha.palette = x # -- color palette ----------------------------------------------------------- if (!is.null(color.palette)) { x = color.palette } else if (is.factor(data$color)) { x = levels(data$color) } else { x = unique(data$color) } if ( length(x) == 1 && "RColorBrewer" %in% rownames(installed.packages()) && x %in% rownames(RColorBrewer::brewer.pal.info) ) { data$color = factor(data$color) n_groups = length(levels(data$color)) n_colors = RColorBrewer::brewer.pal.info[x, "maxcolors"] if (n_groups > n_colors) { cli::cli_abort( "too many node groups ({n_groups}) for ColorBrewer palette {x} (max: {n_colors})" ) } else if (n_groups < 3) { n_groups = 3 } x = RColorBrewer::brewer.pal(n_groups, x)[1:length(levels(data$color))] names(x) = levels(data$color) } if (!is.null(names(x))) { y = unique(na.omit(data$color[!data$color %in% names(x)])) if (length(y) > 0) { cli::cli_abort("no {.arg color.palette} value for {y}") } } else if (is.factor(data$color) || !is_col(x)) { data$color = factor(data$color) x = gray.colors(length(x)) names(x) = levels(data$color) } color.palette = x # -- shape palette ----------------------------------------------------------- if (!is.null(shape.palette)) { x = shape.palette } else if (is.factor(data$shape)) { x = levels(data$shape) } else { x = unique(data$shape) } if (!is.null(names(x))) { y = unique(na.omit(data$shape[!data$shape %in% names(x)])) if (length(y) > 0) { cli::cli_abort("no {.arg shape.palette} value for {y}") } } else if (is.factor(data$shape) || !is.numeric(x)) { data$shape = factor(data$shape) x = scales::shape_pal()(length(levels(data$shape))) names(x) = levels(data$shape) } shape.palette = x # -- size palette ------------------------------------------------------------ if (!is.null(size.palette)) { x = size.palette } else if (is.factor(data$size)) { x = levels(data$size) } else { x = unique(data$size) } if (!is.null(names(x))) { y = unique(na.omit(data$size[!data$size %in% names(x)])) if (length(y) > 0) { cli::cli_abort("no {.arg size.palette} value for {y}") } } else if (is.factor(data$size) || !is.numeric(x)) { data$size = factor(data$size) x = 1:length(levels(data$size)) names(x) = levels(data$size) } size.palette = x # -- node labels ------------------------------------------------------------- l = node.label if (isTRUE(l)) { l = data$label } else if (length(l) > 1 && length(l) == n_nodes) { data$label = l } else if (length(l) == 1 && l %in% v_attr) { l = get_v(net, l) } else { l = ifelse(data$label %in% l, data$label, "") } # -- node placement ---------------------------------------------------------- if (is.character(mode) && length(mode) == 1) { mode = paste0("gplot.layout.", mode) if (!exists(mode, where = getNamespace("sna"))) { cli::cli_abort("unsupported placement method: {.code {mode}}") } else { mode <- get(mode, getNamespace("sna")) } # sna placement algorithm xy = network::as.matrix.network.adjacency(net) xy = do.call(mode, list(xy, layout.par)) xy = data.frame(x = xy[, 1], y = xy[, 2]) } else if (is.character(mode) && length(mode) == 2) { # fixed coordinates from vertex attributes xy = data.frame(x = set_attr(mode[1]), y = set_attr(mode[2])) } else if (is.numeric(mode) && is.matrix(mode)) { # fixed coordinates from matrix xy = data.frame(x = set_attr(mode[, 1]), y = set_attr(mode[, 2])) } else { cli::cli_abort("incorrect {.arg mode} value") } xy$x = scale(xy$x, min(xy$x), diff(range(xy$x)))[, 1] xy$y = scale(xy$y, min(xy$y), diff(range(xy$y)))[, 1] data = cbind(data, xy) # -- edge colors ------------------------------------------------------------- edges = network::as.matrix.network.edgelist(net) if (edge.color[1] == "color" && length(edge.color) == 2) { # edge colors from node source and target edge.color = ifelse( data$color[edges[, 1]] == data$color[edges[, 2]], as.character(data$color[edges[, 1]]), edge.color[2] ) if (!is.null(names(color.palette))) { x = which(edge.color %in% names(color.palette)) edge.color[x] = color.palette[edge.color[x]] } edge.color[is.na(edge.color)] = edge.color[2] } edge.color = set_edge(edge.color, "edge.color") if (!is_col(edge.color)) { cli::cli_abort("incorrect {.arg edge.color} value") } # -- edge list --------------------------------------------------------------- edges = data.frame(xy[edges[, 1], ], xy[edges[, 2], ]) names(edges) = c("X1", "Y1", "X2", "Y2") # -- edge labels, colors and sizes ------------------------------------------- if (!is.null(edge.label)) { edges$midX = (edges$X1 + edges$X2) / 2 edges$midY = (edges$Y1 + edges$Y2) / 2 edges$label = set_edge(edge.label, "edge.label") edge.label.alpha = set_edge(edge.label.alpha, "edge.label.alpha") if (!is.numeric(edge.label.alpha)) { cli::cli_abort("incorrect {.arg edge.label.alpha} value") } edge.label.color = set_edge(edge.label.color, "edge.label.color") if (!is_col(edge.label.color)) { cli::cli_abort("incorrect {.arg edge.label.color} value") } edge.label.size = set_edge(edge.label.size, "edge.label.size") if (!is.numeric(edge.label.size)) { cli::cli_abort("incorrect {.arg edge.label.size} value") } } # -- edge linetype ----------------------------------------------------------- edge.lty = set_edge(edge.lty, "edge.lty") # -- edge size --------------------------------------------------------------- edge.size = set_edge(edge.size, "edge.size") if (!is.numeric(edge.size) || any(edge.size <= 0)) { cli::cli_abort("incorrect {.arg edge.size} value") } # -- plot edges -------------------------------------------------------------- p = ggplot(data, aes(x = .data$x, y = .data$y)) if (nrow(edges) > 0) { if (arrow.gap > 0) { x.dir = with(edges, (X2 - X1)) # do not use absolute value y.dir = with(edges, (Y2 - Y1)) arrow.gap = with(edges, arrow.gap / sqrt(x.dir^2 + y.dir^2)) edges$X1 = edges$X1 + arrow.gap * x.dir edges$Y1 = edges$Y1 + arrow.gap * y.dir edges$X2 = edges$X1 + (1 - arrow.gap) * x.dir edges$Y2 = edges$Y1 + (1 - arrow.gap) * y.dir } p = p + geom_segment( data = edges, aes(x = .data$X1, y = .data$Y1, xend = .data$X2, yend = .data$Y2), linewidth = edge.size, color = edge.color, alpha = edge.alpha, lty = edge.lty, arrow = arrow( type = arrow.type, length = unit(arrow.size, "pt") ) ) } if (nrow(edges) > 0 && !is.null(edge.label)) { p = p + geom_point( data = edges, aes(x = .data$midX, y = .data$midY), alpha = edge.alpha, color = edge.label.fill, size = edge.label.size * 1.5 ) + geom_text( data = edges, aes(x = .data$midX, y = .data$midY, label = label), alpha = edge.label.alpha, color = edge.label.color, size = edge.label.size ) } # -- plot nodes -------------------------------------------------------------- x = list() if (is.numeric(data$alpha) && is_one(data$alpha)) { x = c(x, alpha = unique(data$alpha)) } if (!is.factor(data$color) && is_one(data$color)) { x = c(x, colour = unique(data$color)) # must be English spelling } if (is.numeric(data$shape) && is_one(data$shape)) { x = c(x, shape = unique(data$shape)) } if (is.numeric(data$size) && is_one(data$size)) { x = c(x, size = unique(data$size)) } else { x = c(x, size = max_size) } p = p + geom_point(aes( alpha = factor(alpha), color = factor(color), shape = factor(shape), size = factor(size) )) # -- legend: alpha ----------------------------------------------------------- if (is.numeric(data$alpha)) { v_alpha = unique(data$alpha) names(v_alpha) = unique(data$alpha) p = p + scale_alpha_manual("", values = v_alpha) + guides(alpha = "none") } else { p = p + scale_alpha_manual( set_name(node.alpha, alpha.legend), values = alpha.palette, breaks = names(alpha.palette), guide = guide_legend(override.aes = x) ) } # -- legend: color ----------------------------------------------------------- if (!is.null(names(color.palette))) { p = p + scale_color_manual( set_name(node.color, color.legend), values = color.palette, breaks = names(color.palette), guide = guide_legend(override.aes = x) ) } else { v_color = unique(data$color) names(v_color) = unique(data$color) p = p + scale_color_manual("", values = v_color) + guides(color = "none") } # -- legend: shape ----------------------------------------------------------- if (is.numeric(data$shape)) { v_shape = unique(data$shape) names(v_shape) = unique(data$shape) p = p + scale_shape_manual("", values = v_shape) + guides(shape = "none") } else { p = p + scale_shape_manual( set_name(node.shape, shape.legend), values = shape.palette, breaks = names(shape.palette), guide = guide_legend(override.aes = x) ) } # -- legend: size ------------------------------------------------------------ x = x[names(x) != "size"] if (is.numeric(data$size)) { v_size = set_size(unique(data$size)) if (length(v_size) == 1) { v_size = as.numeric(names(v_size)) p = p + scale_size_manual("", values = v_size) + guides(size = "none") } else { p = p + scale_size_manual( set_name(node.size, size.legend), values = v_size, guide = guide_legend(override.aes = x) ) } } else { p = p + scale_size_manual( set_name(node.size, size.legend), values = set_size(size.palette), guide = guide_legend(override.aes = x) ) } # -- plot node labels -------------------------------------------------------- if (!is_one(l) || unique(l) != "") { label.alpha = set_node(label.alpha, "label.alpha", mode = FALSE) if (!is.numeric(label.alpha)) { cli::cli_abort("incorrect {.arg label.alpha} value") } label.color = set_node(label.color, "label.color", mode = FALSE) if (!is_col(label.color)) { cli::cli_abort("incorrect {.arg label.color} value") } label.size = set_node(label.size, "label.size", mode = FALSE) if (!is.numeric(label.size)) { cli::cli_abort("incorrect {.arg label.size} value") } x = label.trim if ( length(x) > 1 || (!is.logical(x) && !is.numeric(x) && !is.function(x)) ) { cli::cli_abort("incorrect {.arg label.trim} value") } else if (is.numeric(x) && x > 0) { l = substr(l, 1, x) } else if (is.function(x)) { l = x(l) } p = p + geom_text( label = l, alpha = label.alpha, color = label.color, size = label.size, ... ) } # -- horizontal scale expansion ---------------------------------------------- x = range(data$x) if (!is.numeric(layout.exp) || layout.exp < 0) { cli::cli_abort("incorrect {.arg layout.exp} value") } else if (layout.exp > 0) { x = scales::expand_range(x, layout.exp / 2) } # -- finalize ---------------------------------------------------------------- p = p + scale_x_continuous(breaks = NULL, limits = x) + scale_y_continuous(breaks = NULL) + theme( panel.background = element_blank(), panel.grid = element_blank(), axis.title = element_blank(), legend.key = element_blank(), legend.position = legend.position, legend.text = element_text(size = legend.size), legend.title = element_text(size = legend.size) ) return(p) } GGally/R/ggmatrix_gtable_helpers.R0000644000176200001440000001012015023051677016637 0ustar liggesusersplot_gtable <- function(p) { ggplot_gtable(ggplot_build(p)) } # axis_size_left(p) # axis_size_bottom(p) # axis_size_left(g) # axis_size_bottom(g) axis_list <- (function() { axis_label_size_wrapper <- function( fn, filter_val, select_val, unitTo, valueOnly ) { function(pg) { pg_axis <- gtable::gtable_filter(pg, filter_val) items <- pg_axis[[select_val]] if (!inherits(items, "unit.list")) { ret <- fn(items, unitTo = unitTo, valueOnly = valueOnly) } else { ret <- vapply( items, fn, numeric(1), unitTo = unitTo, valueOnly = valueOnly ) } max(ret) } } axis_size_left <- axis_label_size_wrapper( grid::convertWidth, "axis-l", "widths", unitTo = "cm", valueOnly = TRUE ) axis_size_bottom <- axis_label_size_wrapper( grid::convertHeight, "axis-b", "heights", unitTo = "cm", valueOnly = TRUE ) list(axis_size_left, axis_size_bottom) })() axis_size_left <- axis_list[[1]] axis_size_bottom <- axis_list[[2]] # add_correct_label <- function(pmg, pm, plot_panel <- function( pg, row_pos, col_pos, matrix_show_strips, matrix_ncol, plot_show_axis_labels ) { # ask about strips layout_names <- c("panel") strip_right_name <- "strip-r|strip-l" strip_top_name <- "strip-t|strip-b" legend_name <- "guide-box" all_layout_names <- c( layout_names, strip_right_name, strip_top_name, legend_name ) if (is.null(matrix_show_strips)) { # make sure it's on the outer right and top edge if (col_pos == (matrix_ncol)) { layout_names <- c(layout_names, strip_right_name) } if (row_pos == 1) { layout_names <- c(layout_names, strip_top_name) } } else if (matrix_show_strips) { layout_names <- c(layout_names, strip_right_name, strip_top_name) } # if they have a custom plot, make sure it shows up if (!is.null(plot_show_axis_labels)) { # pShowStrips <- ! identical(p$axisLabels, FALSE) # copied from old code. want to replace it to something like above if (plot_show_axis_labels %in% c("internal", "none")) { layout_names <- all_layout_names } } # get correct panel (and strips) layout_rows <- str_detect(pg$layout$name, paste(layout_names, collapse = "|")) layout_info <- pg$layout[layout_rows, ] top_bottom <- layout_info[, c("t", "b")] left_right <- layout_info[, c("l", "r")] plot_panel <- pg[ min(top_bottom):max(top_bottom), min(left_right):max(left_right) ] plot_panel } add_left_axis <- function(pmg, pg, show_strips, grob_pos) { layout <- pg$layout layout_name <- layout$name # axis layout info al <- layout[str_detect(layout_name, "axis-l"), ] if (show_strips) { alx <- layout[str_detect(layout_name, "axis-l|strip-t|strip-b"), ] } else { alx <- al } # get only the axis left objects (and maybe strip top spacer) axis_panel <- pg[min(alx$b):max(alx$t), min(al$l)] # force to align left axis_panel <- gtable::gtable_add_cols(axis_panel, grid::unit(1, "null"), 0) pmg$grobs[[grob_pos]] <- axis_panel pmg } add_bottom_axis <- function(pmg, pg, show_strips, grob_pos) { layout <- pg$layout layout_name <- layout$name # axis layout info al <- layout[str_detect(layout_name, "axis-b"), ] if (show_strips) { alx <- layout[str_detect(layout_name, "axis-b|strip-r|strip-l"), ] } else { alx <- al } # get only the axis left objects (and maybe strip top spacer) axis_panel <- pg[min(al$t), min(alx$l):max(alx$r)] # force to align top axis_panel <- gtable::gtable_add_rows(axis_panel, grid::unit(1, "null"), 1) pmg$grobs[[grob_pos]] <- axis_panel pmg } set_max_axis_size <- function( pmg, axis_sizes, layout_name, layout_cols, pmg_key ) { m_axis_size <- max(axis_sizes, na.rm = TRUE) grob_pos_vals <- which(str_detect(pmg$layout$name, layout_name)) val_pos <- pmg$layout[grob_pos_vals, layout_cols] val_pos <- unique(unlist(val_pos)) # if (length(val_pos) > 1) { # stop(stop_msg) # } pmg[[pmg_key]][[val_pos]] <- unit(m_axis_size, "cm") pmg } GGally/R/reexports.R0000644000176200001440000000172714526737445014040 0ustar liggesusers# reexports from ggstats ------------------- #' @importFrom ggstats ggcoef_model #' @export ggstats::ggcoef_model #' @importFrom ggstats ggcoef_compare #' @export ggstats::ggcoef_compare #' @importFrom ggstats ggcoef_multinom #' @export ggstats::ggcoef_multinom #' @importFrom ggstats ggcoef_plot #' @export ggstats::ggcoef_plot #' @importFrom ggstats signif_stars #' @export ggstats::signif_stars #' @importFrom ggstats geom_stripped_cols #' @export ggstats::geom_stripped_cols #' @importFrom ggstats geom_stripped_rows #' @export ggstats::geom_stripped_rows #' @importFrom ggstats stat_cross #' @export ggstats::stat_cross #' @importFrom ggstats StatCross #' @export ggstats::StatCross #' @importFrom ggstats stat_prop #' @export ggstats::stat_prop #' @importFrom ggstats StatProp #' @export ggstats::StatProp #' @importFrom ggstats stat_weighted_mean #' @export ggstats::stat_weighted_mean #' @importFrom ggstats StatWeightedMean #' @export ggstats::StatWeightedMean GGally/R/ggmatrix_progress.R0000644000176200001440000000311315047655266015541 0ustar liggesusers#' \code{\link{ggmatrix}} default progress bar #' #' @param format,clear,show_after,... parameters supplied directly to \code{progress::\link[progress]{progress_bar}$new()} #' @return function that accepts a plot matrix as the first argument and \code{...} for future expansion. Internally, the plot matrix is used to determine the total number of plots for the progress bar. #' @export #' @examples #' p_ <- GGally::print_if_interactive #' #' pm <- ggpairs(iris, 1:2, progress = ggmatrix_progress()) #' p_(pm) #' #' # does not clear after finishing #' pm <- ggpairs(iris, 1:2, progress = ggmatrix_progress(clear = FALSE)) #' p_(pm) ggmatrix_progress <- function( format = " plot: [:plot_i, :plot_j] [:bar]:percent est::eta ", clear = TRUE, show_after = 0, ... ) { ret <- function(pm, ...) { progress::progress_bar$new( format = format, clear = clear, show_after = show_after, total = pm$ncol * pm$nrow, ... ) } ret } as_ggmatrix_progress <- function(x, total, ...) { if (isFALSE(x)) { return(FALSE) } if (isTRUE(x)) { return(ggmatrix_progress(...)) } if (is.null(x)) { shouldDisplay <- interactive() && total > 15 if (!shouldDisplay) { return(FALSE) } else { return(ggmatrix_progress(...)) } } if (is.function(x)) { return(x) } cli::cli_abort(c( "{.fn as_ggmatrix_progress} only knows how to handle {.code TRUE}, {.code FALSE}, {.code NULL}, or a function.", i = "If a function, it must return a new {.fn progress::progress_bar}." )) } isFALSE <- function(x) { identical(FALSE, x) } GGally/R/ggsurv.R0000644000176200001440000002751015047655266013317 0ustar liggesusers#' Survival curves #' #' This function produces Kaplan-Meier plots using \pkg{ggplot2}. #' As a first argument it needs a \code{survfit} object, created by the #' \code{survival} package. Default settings differ for single stratum and #' multiple strata objects. #' #' @export #' @param s an object of class \code{survfit} #' @param CI should a confidence interval be plotted? Defaults to \code{TRUE} #' for single stratum objects and \code{FALSE} for multiple strata objects. #' @param plot.cens mark the censored observations? #' @param surv.col colour of the survival estimate. Defaults to black for #' one stratum, and to the default \pkg{ggplot2} colours for multiple #' strata. Length of vector with colour names should be either 1 or equal #' to the number of strata. #' @param cens.col colour of the points that mark censored observations. #' @param lty.est linetype of the survival curve(s). Vector length should be #' either 1 or equal to the number of strata. #' @param lty.ci linetype of the bounds that mark the 95% CI. #' @param size.est line width of the survival curve #' @param size.ci line width of the 95% CI #' @param cens.size point size of the censoring points #' @param cens.shape shape of the points that mark censored observations. #' @param back.white if TRUE the background will not be the default #' grey of \code{ggplot2} but will be white with borders around the plot. #' @param xlab the label of the x-axis. #' @param ylab the label of the y-axis. #' @param main the plot label. #' @param order.legend boolean to determine if the legend display should be ordered by final survival time #' @return An object of class \code{ggplot} #' @author Edwin Thoen #' @importFrom stats time #' @examples #' # Small function to display plots only if it's interactive #' p_ <- GGally::print_if_interactive #' #' if (require(survival) && require(scales)) { #' lung <- survival::lung #' sf.lung <- survival::survfit(Surv(time, status) ~ 1, data = lung) #' p_(ggsurv(sf.lung)) #' #' # Multiple strata examples #' sf.sex <- survival::survfit(Surv(time, status) ~ sex, data = lung) #' pl.sex <- ggsurv(sf.sex) #' p_(pl.sex) #' #' # Adjusting the legend of the ggsurv fit #' p_(pl.sex + #' ggplot2::guides(linetype = "none") + #' ggplot2::scale_colour_discrete( #' name = "Sex", #' breaks = c(1, 2), #' labels = c("Male", "Female") #' )) #' #' # Multiple factors #' lung2 <- dplyr::mutate(lung, older = as.factor(age > 60)) #' sf.sex2 <- survival::survfit(Surv(time, status) ~ sex + older, data = lung2) #' pl.sex2 <- ggsurv(sf.sex2) #' p_(pl.sex2) #' #' # Change legend title #' p_(pl.sex2 + labs(color = "New Title", linetype = "New Title")) #' #' # We can still adjust the plot after fitting #' kidney <- survival::kidney #' sf.kid <- survival::survfit(Surv(time, status) ~ disease, data = kidney) #' pl.kid <- ggsurv(sf.kid, plot.cens = FALSE) #' p_(pl.kid) #' #' # Zoom in to first 80 days #' p_(pl.kid + ggplot2::coord_cartesian(xlim = c(0, 80), ylim = c(0.45, 1))) #' #' # Add the diseases names to the plot and remove legend #' p_(pl.kid + #' ggplot2::annotate( #' "text", #' label = c("PKD", "Other", "GN", "AN"), #' x = c(90, 125, 5, 60), #' y = c(0.8, 0.65, 0.55, 0.30), #' size = 5, #' colour = scales::pal_hue( #' h = c(0, 360) + 15, #' c = 100, #' l = 65, #' h.start = 0, #' direction = 1 #' )(4) #' ) + #' ggplot2::guides(color = "none", linetype = "none")) #' } ggsurv <- function( s, CI = "def", plot.cens = TRUE, surv.col = "gg.def", cens.col = "gg.def", lty.est = 1, lty.ci = 2, size.est = 0.5, size.ci = size.est, cens.size = 2, cens.shape = 3, back.white = FALSE, xlab = "Time", ylab = "Survival", main = "", order.legend = TRUE ) { rlang::check_installed(c("survival", "scales")) strata <- ifelse(is.null(s$strata), 1, length(s$strata)) stopifnot(length(surv.col) == 1 | length(surv.col) == strata) stopifnot(length(lty.est) == 1 | length(lty.est) == strata) if (strata == 1) { fn <- ggsurv_s } else { fn <- ggsurv_m } pl <- fn( s, CI, plot.cens, surv.col, cens.col, lty.est, lty.ci, size.est, size.ci, cens.size, cens.shape, back.white, xlab, ylab, main, strata, order.legend ) pl } # survival function for single survival ggsurv_s <- function( s, CI = "def", plot.cens = TRUE, surv.col = "gg.def", cens.col = "gg.def", lty.est = 1, lty.ci = 2, size.est = 0.5, size.ci = size.est, cens.size = 2, cens.shape = 3, back.white = FALSE, xlab = "Time", ylab = "Survival", main = "", strata = 1, order.legend = TRUE ) { dat <- data.frame( time = c(0, s$time), surv = c(1, s$surv), up = c(1, s$upper), low = c(1, s$lower), cens = c(0, s$n.censor) ) dat.cens <- dat[!is.na(dat$cens) & dat$cens != 0, ] col <- ifelse(surv.col == "gg.def", "black", surv.col) pl <- ggplot(dat, aes(x = .data$time, y = .data$surv)) + geom_step(col = col, lty = lty.est, linewidth = size.est) + xlab(xlab) + ylab(ylab) + ggtitle(main) if (identical(CI, TRUE) | identical(CI, "def")) { pl <- pl + geom_step( aes(y = .data$up), color = col, lty = lty.ci, linewidth = size.ci ) + geom_step( aes(y = .data$low), color = col, lty = lty.ci, linewidth = size.ci ) } if (identical(plot.cens, TRUE)) { if (nrow(dat.cens) == 0) { cli::cli_abort("There are no censored observations") } col <- ifelse(cens.col == "gg.def", "red", cens.col) pl <- pl + geom_point( data = dat.cens, mapping = aes(y = .data$surv), shape = cens.shape, col = col, size = cens.size ) } if (back.white == TRUE) { pl <- pl + theme_bw() } pl } # survival function for multiple survivals ggsurv_m <- function( s, CI = "def", plot.cens = TRUE, surv.col = "gg.def", cens.col = "gg.def", lty.est = 1, lty.ci = 2, size.est = 0.5, size.ci = size.est, cens.size = 2, cens.shape = 3, back.white = FALSE, xlab = "Time", ylab = "Survival", main = "", strata = length(s$strata), order.legend = TRUE ) { n <- s$strata has_many <- all(grepl(",", names(s$strata))) if (has_many) { gr.name <- "combination" ugroups <- names(s$strata) } else { # singular strataEqualNames <- strsplit(names(s$strata), "=") gr.name <- strataEqualNames[[1]][[1]] ugroups <- vapply(strataEqualNames, `[[`, character(1), 2) } getlast <- function(x) { res <- NULL maxTime <- max(x$time) for (mo in names(x$strata)) { sur <- x[mo]$surv n <- length(sur) # grab the last survival value surValue <- sur[n] if (isTRUE(all.equal(surValue, 0))) { # if they die, order by percent complete of max observation. # tie value of 0 if the last person dies at the last time surTime <- x[mo]$time[n] surValue <- (surTime / maxTime) - 1 } res <- append(res, surValue) } return(res) } if (isTRUE(order.legend)) { group_order <- order(getlast(s), decreasing = TRUE) lastv <- ugroups[group_order] if (length(surv.col) == length(n)) { surv.col <- surv.col[group_order] } if (length(cens.col) == length(n)) { cens.col <- cens.col[group_order] } } else { lastv <- ugroups } groups <- factor(ugroups, levels = lastv) gr.df <- vector("list", strata) n.ind <- cumsum(c(0, n)) for (i in 1:strata) { indI <- (n.ind[i] + 1):n.ind[i + 1] gr.df[[i]] <- data.frame( time = c(0, s$time[indI]), surv = c(1, s$surv[indI]), up = c(1, s$upper[indI]), low = c(1, s$lower[indI]), cens = c(0, s$n.censor[indI]), group = rep(groups[i], n[i] + 1) ) } dat <- do.call(rbind, gr.df) pl <- ggplot(dat, aes(x = .data$time, y = .data$surv, group = .data$group)) + geom_step(aes(col = .data$group, lty = .data$group), linewidth = size.est) + xlab(xlab) + ylab(ylab) + ggtitle(main) pl <- if (surv.col[1] != "gg.def") { scaleValues <- if (length(surv.col) == 1) { rep(surv.col, strata) } else { surv.col } pl + scale_colour_manual(values = scaleValues) } else { pl + scale_colour_discrete() } lineScaleValues <- if (length(lty.est) == 1) { rep(lty.est, strata) } else { lty.est } pl <- pl + scale_linetype_manual(values = lineScaleValues) if (identical(CI, TRUE)) { stepLty <- if ((length(surv.col) > 1 | surv.col == "gg.def")[1]) { lty.ci } else { surv.col } pl <- pl + geom_step( aes(y = .data$up, lty = .data$group, col = .data$group), lty = stepLty, linewidth = size.ci ) + geom_step( aes(y = .data$low, lty = .data$group, col = .data$group), lty = stepLty, linewidth = size.ci ) } if (identical(plot.cens, TRUE)) { dat.cens <- dat[!is.na(dat$cens) & dat$cens != 0, ] dat.cens <- dat.cens[!is.na(dat.cens$group) & dat.cens$group != "PKD", ] if (nrow(dat.cens) == 0) { cli::cli_abort("There are no censored observations") } if (length(cens.col) == 1) { if (identical(cens.col, "gg.def")) { # match the colors of the lines pl <- pl + geom_point( data = dat.cens, mapping = aes(y = .data$surv, col = .data$group), shape = cens.shape, size = cens.size, show.legend = FALSE ) } else { # supply the raw color value pl <- pl + geom_point( data = dat.cens, mapping = aes(y = .data$surv), shape = cens.shape, color = cens.col, size = cens.size ) } } else if (length(cens.col) > 0) { # if (!(identical(cens.col, surv.col) || is.null(cens.col))) { # cli::cli_warn("Color scales for survival curves and censored points don't match.\nOnly one color scale can be used. Defaulting to surv.col") # } if (!identical(cens.col, "gg.def")) { if (length(cens.col) != strata) { cli::cli_warn( "Color scales for censored points don't match the number of groups. Defaulting to ggplot2 default color scale" ) cens.col <- "gg.def" } } if (identical(cens.col, "gg.def")) { # match the group color value pl <- pl + geom_point( data = dat.cens, mapping = aes(y = .data$surv, col = .data$group), shape = cens.shape, show.legend = FALSE, size = cens.size ) } else { # custom colors and maybe custom shape uniqueGroupVals <- levels(dat.cens$group) if (length(cens.shape) == 1) { cens.shape <- rep(cens.shape, strata) } if (length(cens.shape) != strata) { cli::cli_warn( "The length of the censored shapes does not match the number of groups (or 1). Defaulting shape = 3 (+)" ) cens.shape <- rep(3, strata) } for (i in seq_along(uniqueGroupVals)) { groupVal <- uniqueGroupVals[i] dtGroup <- dat.cens[ !is.na(dat.cens$group) & dat.cens$group == groupVal, ] if (nrow(dtGroup) == 0) { next } pl <- pl + geom_point( data = dtGroup, mapping = aes(y = .data$surv), color = I(cens.col[i]), shape = cens.shape[i], show.legend = FALSE, size = cens.size ) } } } } if (identical(back.white, TRUE)) { pl <- pl + theme_bw() } pl <- pl + labs( color = gr.name, linetype = gr.name ) pl } GGally/R/vig_ggally.R0000644000176200001440000000253115047655266014122 0ustar liggesusers#' View GGally vignettes #' #' This function will open the directly to the vignette requested. If no \code{name} is provided, the index of all \pkg{GGally} vignettes will be opened. #' #' This method allows for vignettes to be hosted remotely, reducing \pkg{GGally}'s package size, and installation time. #' #' @param name Vignette name to open. If no name is provided, the vignette index will be opened #' @export #' @examples #' \donttest{ #' # View `ggnostic` vignette #' vig_ggally("ggnostic") #' #' # View all vignettes by GGally #' vig_ggally() #' } vig_ggally <- function(name) { vig_url <- if (missing(name) || is.null(name)) { "https://ggobi.github.io/ggally/articles/" } else { tryCatch( { paste0( "https://ggobi.github.io/ggally/articles/", match.arg(name, vignettes_for_ggally), ".html" ) }, error = function(e) { cli::cli_inform( "Unknown vignette: {name}. Opening Vignette index page" ) "https://ggobi.github.io/ggally/articles/" } ) } browseURL(vig_url) } vignettes_for_ggally <- c( "ggally_plots", "ggally_stats", "ggbivariate", "ggcoef_model", "ggcoef", "ggduo", "ggmatrix", "ggnetworkmap", "ggnostic", "ggpairs", "ggscatmat", "ggsurv", "ggtable", "glyph" ) GGally/data/0000755000176200001440000000000015047655270012355 5ustar liggesusersGGally/data/tips.rda0000644000176200001440000000504414526730006014017 0ustar liggesusers‹Ýšoh]gǦÉmZÓWXí’¦Iš&÷üÎÿ6é9±YVeþé6pƒŠ\»ÔÆ¥IMRA„"ˆ¸7‚n/™ˆ  A„½d"¾™ˆ¯†à|áD¦¶¶Í¶Ö{óûþ~¿äìÞ››4cNŸç9çyžÏïßó=7—>2ý8•/çr¹B®Ïåò¥Z·T¨ýSôv×+s—–s¹â{ký]µkoíº–VÞ¼ôü+åÉtà…¾+yè…Ô/Ï¥ô·cµÝ_½ú¡Ôûy}ÙSçwõe§Óè=¼_å“hÿÉöæ%®-L+e¶Ç¹ÌöE\ú×–MOžg.Áþ`-p_MS—íšøö˵ÏïSÂ>Èçâ3õy¶§ûƈ³û5öóTžï¿Àq¼ÂûŸ~€ó(q;úös±ÇA~=p+ËlW8ìë`‡Äß}÷ãf?ã‡ØÎcˆÃaÌ—ü€¿ÁKl—¾{‰ãYA ô× æGiúi¶kü:ï7õž?‚¼xêÀâõ¨Ÿñ9[û¤•3loðkO¿×À>CØWêv¢~Æ`÷Ì ç3x u‰yc/¢nÁ}ÞŸ&y<ŠøÂž¢=ÕÅv‡ÿaN ÔÝ$êîðÃ\'Cˆw„|Aàœ^å¸ÿíBü&_æõ‡¿cháW€säb_õ=ˆ< a_úÏ?„üÊù…}ø5‚x;Os\¦·éïóøDæC>Œ8Óóœÿ#8Çý¨Ãƒ°wõ1;´Αû[¶kòO|¾O#ϱ؅ó]Ažü¯óýaØ[AÞä¼8ßÀþðßC¼äéðò;>Šó:Žõ’çöTççÌù+û3Š<õãœL}ŠÏÅÔ£<ã¼ÌüŒý rÝMÏp\E¿<äý$Î!!î!toõâB/'pþÆÀ¯@wNn|/<ønGàÏQ䟇aèŽ<¯@÷¼o"Þ¨ƒãЛSŸáý#ÔÙ0â{ç0F\NàÜC÷'à÷0êyþA“¨“!äUÎÇ!è„èŠÜ¯ÀŽìã!?#¨¿ï‰ú q<±_‡aß8ìF>Sè×Ôß¹ÜÅq9^ðSöËA}ש¼§“רîdöô ÎeĽï‡ýð'‡ç]ìgrï£n~ž¼ŽqÏKnÁ¿.Y‡8±;g“UèÛÔƒò‘‡^Ĺ÷ó°ã îw£Î ØGì“vâ~rã’Øƒ¶ø,×qöõ€¯þ">Ä¥OìN—`O?O®ÃïûP¯Â‘uï;3ÏÅ®ø}Ü&7QWûßè©øuí°ÿ~ØÕ¸ÂäÆ{±¾vv#.EÖ¡ä5±órßäΓØÛõŽcrMâÝíÍÄ»vÈx7ó“7ñÞ”ýrЋ¾~è~2ñ“u¤~H”1ÞøônŒ_6žo©ïF¢>“UØÙ‹vò qÎø¯vÉýü±œƒ>އåu± u€zLVqNÅ>‰S vô¢Žndâ(mžÏ‘úÝÉyÓ±ÌCü4¿Ù}¤•ó*~Ü/õ,~¡-°ßêßuÔß*Ç-y=coÖ¿ä1ËïÃyÎ^Y8É<±/»¯´ZŸÈ·œ÷ý°÷ÞÛ2m·Ô1tEtJë c‡´šÔì»ûh<3ö‰Ÿ=™ýdœ­ó^Ø]‚žå¤N0ï¾i<›ÄGìUÈÄSžãýîF\Än9ßùÌû¥ºñ@f?øü ñÈêŸØÝ…÷ôHò—ÜÆ}Yw ödó¯:…8íÊÄCë‚õ/¹±Qå|È9Oþ î~ÔóÆç0ycãþµ¿«÷Ôþ©ïVû{;WXweÇÍžå›´ÒßÊ>[±¡ÕÕŒÛÎ~ÍìÈ·Øw³Ø´â4›“e¶ò§Y³k7›×нÕùíĨUΛå üµËÞlM+?›ÙØNŽ›™F¼výͬÛðZçüì—fç—k½^ÌX»;3{±:?‹Qéãký ë:ÎÍW—eY^–¯ž[Y\ªõngäãÝ|µ*ÍV¥Ñ¬„š­iô¬UÙ5³e³{›qîußnÎfǨ«Ý}v‚·•=å¶Õ½fõ¸n\—ÂÜFÁ(|b½â³Ë<©(“ò¹VòPÜÁk'RÙèz§ÙTÚÆµc²ÝØlǾ¾îUMíd½Þw#w›óu¹Aêv®‰ÂÌÒœt­®h÷òº¥Ç.\^Ú’l¼Ýo§wõÓåòN°o§¯ÿwŽîuœîs|jø­¢sznaav £Ž‡//œ»ÐŽHäD$Öëõú÷f!÷V mt¿Õ» Ù>Íž·ó~)eú›1³ó³s×3²Ilöݤ‘?ùMž·»Ïfì,³˜™ßÊ_¹:·ÁÊ®ïÈìÓlõïpY³>7¥ëùÒ®¥ ·nq]»Ù^­¸ëk&;¯‘?MöÍ7Ù»UmgãÚàùÆ_ ªgåˆúÿ©ß,¯,®Tç?û¹¹ùyÜ)®Ì]’îòìÓèv._\|J•¥ødõ+è–Væ.êïËsW²¿{t/-~yl=ù&çét\éxÒñ¥H'”N$‚SÑž£=Òž«=O{¾öí…Ú‹´§ R)ƒ”AÊ e2H¤ R)ÃU†« W®2\e¸Êp•á*ÃU†« Ož2± }þ.½=(#ÇmKæý¡ˆÃþ1êy@ÿ:ðѼÏ2ÒÁé`A3Í!²¦fÛƒj¦ÏÊ5øE~éÿ ÇNp åG>'8†q‚à'8 8ÁQÄ ŽbNpŒàÇHNpŒâÇhNpŒãÇxNp\Šމœà˜Ä Ž/q‚ãËœà˜Ì ;'8®æÇ5œà¸–S8Áq'8¦r‚c:'8näG '8fp‚c'8J9Á1›eœà˜Ã ŽrNpÌãÇMœàXÈ ŽEœàXÌ Ž%œàXÊ Žeœà¨à‡ƒ.Np¸9ÁQÉ '8ª8ÁáåÇrNp¬àG5'8j8ÁQË '8üœàp‚#È ŽNp4r‚£‰«8ÁñNp¬æÇÍœàXÃ Žµœà Ûy_ Ž!œàÊ Ž|Np ãÇpNp˜9ÁaåG'8 9Á1‚£9Á1†c9Á1“8Áq5'8®ãÇõœà˜Ê Žiœà¸Ó9Áq#'8J8Á1ƒ39Á1‹³9ÁQÆ Ž¹œà˜Ï ŽœàXÄ Žeœàpr‚ÃÅ ŽJNpx8ÁáåG'8Vr‚£žNp4s‚cíˆÏ!ãù¹AM¦Ì¿,–$…Áó´ ¨†e~~”i Kp£š9Va$+Œ&Û ’=e¹-‘ýd\U¡M„™csHhŠ*¨p@©ôÍ™k)åhp4yVQ`\V!1‡Ùšd9Ò”d‰Ý$ü¸Ÿ}ìö÷¾–=Nùk×× ÝULäÛ¢YþŽãëMÿ øÚe~­**Ü8s`g„Œ–¢ª gÉ,•4É_‡µ(”"Ù“Ì-²(ÊPI0×÷ó(°„`*ënÑ€ÄJª¨J Äî©!ú,ýöÇ?+±_Eôo˜¾Ø’ñ3"ïËê›9¾ÝÇ»þÃ]@K@?€ìõwÉ@Œ–ØN¢÷w“Á³c? 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̸®™ý¦-’.šU>5+óéµñ\?Aâ٦Јínñê]Ø‘Q‡‰1ž?Q"GaËâ>Ô 1÷2™‹Í Z©c©Ž"ƒ@£Á)͉ÔÆ'ÍN£÷.ÔKcºíNç_Rƒ”>䥇I=˜5Ñ€ÿÁà ¿a½²-Én¯·"aÆ3(¢’¡™ÖŠ—Ê8.ž”Jt¤y ø ü„q€Jþºìöõó„ZX”à ågÃC<ˆÊz͌Ǿ°Æµ³dèŠQO*6ž~åoY<À”Û¡éúø^è:Ïv–Í=J¥¥°f¸57_Á×¾¨€+ÀàS3_6ŠVæmßÌk #w´™x"5%") export(StatCross) export(StatGGallyCount) export(StatProp) export(StatWeightedMean) export(add_ref_boxes) export(add_ref_lines) export(add_to_ggmatrix) export(brew_colors) export(broomify) export(eval_data_col) export(fn_switch) export(geom_stripped_cols) export(geom_stripped_rows) export(getPlot) export(ggally_autopoint) export(ggally_autopointDiag) export(ggally_barDiag) export(ggally_blank) export(ggally_blankDiag) export(ggally_box) export(ggally_box_no_facet) export(ggally_colbar) export(ggally_cor) export(ggally_cor_v1_5) export(ggally_count) export(ggally_countDiag) export(ggally_cross) export(ggally_crosstable) export(ggally_density) export(ggally_densityDiag) export(ggally_denstrip) export(ggally_diagAxis) export(ggally_dot) export(ggally_dot_and_box) export(ggally_dot_no_facet) export(ggally_facetbar) export(ggally_facetdensity) export(ggally_facetdensitystrip) export(ggally_facethist) export(ggally_na) export(ggally_naDiag) export(ggally_nostic_cooksd) export(ggally_nostic_hat) export(ggally_nostic_resid) export(ggally_nostic_se_fit) export(ggally_nostic_sigma) export(ggally_nostic_std_resid) export(ggally_points) export(ggally_ratio) export(ggally_rowbar) export(ggally_smooth) export(ggally_smooth_lm) export(ggally_smooth_loess) export(ggally_statistic) export(ggally_summarise_by) export(ggally_table) export(ggally_tableDiag) export(ggally_text) export(ggally_trends) export(ggbivariate) export(ggcoef) export(ggcoef_compare) export(ggcoef_model) export(ggcoef_multinom) export(ggcoef_plot) export(ggcorr) export(ggduo) export(ggfacet) export(gglegend) export(ggmatrix) export(ggmatrix_gtable) export(ggmatrix_location) export(ggmatrix_progress) export(ggnet) export(ggnet2) export(ggnetworkmap) export(ggnostic) export(ggpairs) export(ggparcoord) export(ggscatmat) export(ggsurv) export(ggtable) export(ggts) export(glyphplot) export(glyphs) export(grab_legend) export(is.glyphplot) export(is_character_column) export(is_ggmatrix) export(is_horizontal) export(lowertriangle) export(mapping_color_to_fill) export(mapping_string) export(mapping_swap_x_y) export(max1) export(mean0) export(min0) export(model_beta_label) export(model_beta_variables) export(model_response_variables) export(print_if_interactive) export(putPlot) export(range01) export(remove_color_unless_equal) export(rescale01) export(rescale11) export(scatmat) export(signif_stars) export(stat_cross) export(stat_ggally_count) export(stat_prop) export(stat_weighted_mean) export(uppertriangle) export(v1_ggmatrix_theme) export(vig_ggally) export(weighted_mean_sd) export(weighted_median_iqr) export(wrap) export(wrap_fn_with_param_arg) export(wrap_fn_with_params) export(wrapp) if (getRversion() < "4.3.0") importFrom("S7", "@") if (utils::packageVersion("ggplot2") < "3.5.2.9001") S3method("+",ggmatrix) import(RColorBrewer) import(S7) import(ggplot2) import(utils) importFrom(dplyr,.data) importFrom(dplyr,across) importFrom(dplyr,all_of) importFrom(dplyr,arrange) importFrom(dplyr,bind_cols) importFrom(dplyr,bind_rows) importFrom(dplyr,everything) importFrom(dplyr,group_by) importFrom(dplyr,last_col) importFrom(dplyr,mutate) importFrom(dplyr,n) importFrom(dplyr,pick) importFrom(dplyr,reframe) importFrom(dplyr,rename) importFrom(dplyr,summarise) importFrom(ggstats,StatCross) importFrom(ggstats,StatProp) importFrom(ggstats,StatWeightedMean) importFrom(ggstats,geom_stripped_cols) importFrom(ggstats,geom_stripped_rows) importFrom(ggstats,ggcoef_compare) importFrom(ggstats,ggcoef_model) importFrom(ggstats,ggcoef_multinom) importFrom(ggstats,ggcoef_plot) importFrom(ggstats,signif_stars) importFrom(ggstats,stat_cross) importFrom(ggstats,stat_prop) importFrom(ggstats,stat_weighted_mean) importFrom(grDevices,colorRampPalette) importFrom(grDevices,gray.colors) importFrom(grid,gpar) importFrom(grid,grid.draw) importFrom(grid,grid.layout) importFrom(grid,grid.newpage) importFrom(grid,grid.rect) importFrom(grid,grid.text) importFrom(grid,popViewport) importFrom(grid,pushViewport) importFrom(grid,seekViewport) importFrom(grid,upViewport) importFrom(grid,viewport) importFrom(gtable,gtable_filter) importFrom(lifecycle,deprecate_soft) importFrom(lifecycle,deprecated) importFrom(magrittr,"%>%") importFrom(rlang,"%||%") importFrom(rlang,":=") importFrom(rlang,.data) importFrom(rlang,sym) importFrom(stats,anova) importFrom(stats,complete.cases) importFrom(stats,cor) importFrom(stats,lm) importFrom(stats,mad) importFrom(stats,median) importFrom(stats,na.omit) importFrom(stats,pf) importFrom(stats,qnorm) importFrom(stats,quantile) importFrom(stats,sd) importFrom(stats,spline) importFrom(stats,symnum) importFrom(stats,terms) importFrom(stats,time) importFrom(tidyr,pivot_longer) importFrom(utils,capture.output) importFrom(utils,head) importFrom(utils,installed.packages) importFrom(utils,str) GGally/NEWS.md0000644000176200001440000004426215050621167012542 0ustar liggesusers# GGally 2.4.0 * Replace internal usage with the base pipe (`|>`). (Thank you @m-muecke! #554) * Enhance all error and warning outputs by using `{cli}`. (Thank you @m-muecke! #557) * Add `nba_ppg_2008` dataset describing NBA Player Statistics for 2008-2009 Season. (#562) * Update `ggnetworkmap` to use `{airports}` package for airport data visualization. (#562) # GGally 2.3.0 * With `{ggplot2}` v4.0.0, objects are now `+`'ed together using `{S7}`. This means the startup message for `Registered S3 method overwritten by 'GGally'` has been removed. (Thank you @teunbrand for the enhancement in ggplot2! #545) * Fixed bug where correlations of 0 in a `ggcor()` output were silently dropped. Now all correlations are always displayed. (Thank you @winterstat! #536) * Fixed correlations values `ggcor()` so that they are formatted to the same number of decimal places via `label_round`. Now `0.2` and `0.001` with `label_round = 2` will be displayed as `"0.20"` and `"0.00"` respectively. (Thank you @winterstat! #536) * Added parameter `ggally_cor(na.rm=)` which is passed directly to `ggally_statistic()`. (Thank you @vinouselouane! #516) * Deprecated parameter `ggally_cor(use=)`. The value was never leveraged within the code. Please use `ggally_cor(na.rm=)` instead. (Thank you @vinouselouane! #516) * Prepare GGally for `{ggplot2}` v4 (Thank you @teunbrand! #528) * Replace internal `{plyr}` usage with `{dplyr}`. (Thank you @MichaelChirico! #520, #521, #522, #523, #524, #525, #527, #530) * General package dependency cleanup. (Thank you @olivroy! #509) * Fix `anyClass` ordering in `ggparcoord()` when data has missing values (Thank you @92amartins! #500) * Use `{lifecycle}` for deprecation warnings (Thank you @92amartins! #494, #496) * Leverage `.data$` mask to remove all global variable declarations. (Thank you @MichaelChirico! #533) * Warn and return `"NA"` when less than 3 values are given to a combination in `ggally_cor()`. (Thank you @bk1n! #510) * Added helper method `is_ggmatrix()` to check if an object is a `ggmatrix` object. (#548) * Remove `gg` class from `ggmatrix` objects. This is no longer needed due to enhanced `+` S7 methods. (#549) * Bumped minimum required version of `R` to 4.3 due to S7 handling the `+` operations. (#549) # GGally 2.2.1 * Fix compatibility with `{ggplot2}` 3.5.0 (Thank you @teunbrand! #481) # GGally 2.2.0 ### Bug fixes * Removed dependency on reshape2 (#475) * Reverse ordering of y-axis in `ggally_count()` (#420) * Facets ordering in `ggcoef_compare()` (#426) * Fix in `ggcoef_compare()` when using tidy selectors for `no_reference_row` (#430) * Fix in `ggcoef_compare()` regarding `no_reference_row` option (#430) * Fix in `ggcoef_compare()` with an `include` argument (#447) * New default tidier for `ggcoef_model()`, now using `broom.helpers::tidy_with_broom_or_parameters()` (#432) * Re-export methods from and redirect vignettes to the `{ggstats}` package (#452, #457) * Replaced `..scaled..` with `after_stat(scaled)` in ggscatmat (#467) # GGally 2.1.2 ### Bug fixes * Replace `ggplot2` usage of `*_guide = FALSE` with `*_guide = "none"` (@larmarange, #418) * Require `network >= 1.17.1` (#418) # GGally 2.1.1 ### Bug fixes * Ignore `colour` aesthetic if all values are `NA`. (@larmarange, #404) * Avoid all duplicates within `stat_cross()`. (@larmarange, #402) * Avoid an error when tidiers do not return p-values. (@larmarange, #400) * Suggest `emmeans` to allow `ggcoef()` example to execute. (#407) # GGally 2.1.0 ### Breaking changes * Following version 7.0.0 of `broom`, computed residuals in `stat_cross()` are now named `"resid"` and `"std.resid"`. `cells` and `fill` arguments of `ggally_crosstable()` and `ggtable()` have been updated accordingly (@larmarange, #391) ### Other changes * `ggcoef()` redesign based on `broom.helpers` with four new functions: `ggcoef_model()`, `ggcoef_compare()`, `ggcoef_multinom()` and `ggcoef_plot()` (more informations in the dedicated vignette, @larmarange, #392) * New geometries: `geom_stripped_rows()` and `geom_stripped_cols()` (#392, @larmarange) * New option `reverse_fill_labels` for `ggally_colbar()` and `ggally_rowbar()` (@larmarange, #374) * `stat_prop()` now accepts a **x** or a **y** aesthetic (#395, @larmarange) * Temporarily not listening to `ggally_statistic(family)` to avoid monospaced font issues. See #373 for more details. (#387) # GGally 2.0.0 ### New Vignettes * [`vig_ggally("ggally_plots")`](https://ggobi.github.io/ggally/articles/ggally_plots.html) - ggally_*(): List of available high-level plots * [`vig_ggally("ggally_stats")`](https://ggobi.github.io/ggally/articles/ggally_stats.html) - stat_*(): Additional statistics for ggplot2 * [`vig_ggally("ggbivariate")`](https://ggobi.github.io/ggally/articles/ggbivariate.html) - ggbivariate(): Plot an outcome with several potential explanatory variables * [`vig_ggally("ggtable")`](https://ggobi.github.io/ggally/articles/ggtable.html) - ggtable(): Cross-tabulated tables * To view all vignettes for `GGally`, call `GGally::vig_ggally()` ### New functions `ggbivariate()` (@larmarange, #324) * Display an outcome using several potential explanatory variables * [`vig_ggally("ggbivariate")`](https://ggobi.github.io/ggally/articles/ggbivariate.html) `ggtable()` (@larmarange, #351) * Cross-tabulated tables of discrete variables * [`vig_ggally("ggtable")`](https://ggobi.github.io/ggally/articles/ggtable.html) `add_to_ggmatrix()` (#362) * Add ggplot2 objects to `ggmatrix` objects at selected locations * Locations can be rows, columns, matrices, or other shorthand values. `ggally_autopoint()`, `ggally_autopointDiag()` (@larmarange, #325) * Make scatterplots compatible with both continuous and categorical variables using `ggforce::geom_autopoint()`. `ggally_colbar()`, `ggally_rowbar()` (@larmarange, #324) * Plot column or row percentage using bar plots. `ggally_count()`, `ggally_countDiag()` (@larmarange, #321) * Plot the number of observations by using rectangles with proportional areas. `ggally_cross()` (@larmarange, #326) * Plot the number of observations by using square points with proportional areas. `ggally_crosstable()` (@larmarange, #351) * Display a cross-tabulated table. `ggally_statistic()` (#327) * A generalized version of `ggally_cor()` * Use this method to create functions similar to `ggally_cor()` that return any text value given and `x` and `y` vector of data `ggally_summarise_by()` (@larmarange, #325) * Display summary statistics of a continuous variable for each value of a discrete variable. `ggally_table()` (@larmarange, #326) * Plot the number of observations as a table. `ggally_trends()` (@larmarange, #333) * Plot trends using line plots. `signif_stars()` (@larmarange, #327) * Return the appropriate number of significance stars as a character vector for the provided numeric input values. ### New `ggplot2` plot statistics: `stat_cross()` (@larmarange, #326) * Computes statistics of a 2-dimensional matrix using `broom::augment.htest`. `stat_prop()` (@larmarange, #324) * Compute proportions according to custom denominator. `stat_weighted_mean()` (@larmarange, #333) * Compute the mean of y aesthetic for each unique value of x, taking into account weight aesthetic if provided. ### Major updates `ggally_cor()` (#327) * New implementation using `ggally_statistic()` * Will now hide the grid by default and add a border (`displayGrid = FALSE`) * Added the ability to display significance stars (`stars = TRUE`) * Alignment has been fixed so both short and long names should be displayed within view. `alignPercent` now corresponds to the center of the text. * Added the ability to separate the arguments sent to the title and the groups (`title_args` and `group_args`) * Digits now represents the total number of digits after the decimal place. * To use the old version, change your `ggally_cor()` function calls to `ggally_cor_v1_5()`. * Previously deprecated parameters have been removed Website * Updated to use `pkgdown` (#335) ### Features and bug fixes: `ggpairs()` (#331) * New `proportion` argument to control relative size of sub-plots * option `proportion = "auto"` for automatic guess based on the number of levels for discrete variables `ggduo()` (#331) * New `xProportion` and `yProportion` arguments to control relative size of sub-plots * Set option `xProportion = "auto"` and `yProportion = "auto"` for automatic guess based on the number of levels for discrete variables `ggscatmat()` * `lowertriangle()` now preallocates it's memory usage for a 2-5x speed improvement. (@vlepori, #328) * Fixed `facet`'ing error where the factor order was not preserved. This error caused the facets to be alphabetically sorted, cause plots to appear in unexpected locations. (#355) # GGally 1.5.0 * Updated to work with ggplot2 v3.3.0 (#308) `ggnet` and `ggnet2` * Fixed some logic bugs from newer R versions `ggally_box` and `ggally_dot` * Label now appears axis and is displayed in a plot matrix. (#253) `ggsurv` * Provide sensible legend values when multiple factors are present. (#310) `ggally_cor` * Added `displayGrid` argument to turn of the background grid. (#312) GGally 1.3.3 ---------------- `ggpairs` and `ggduo` * Become ggplot2 v2.2.2 compliant (#266) * When retrieving functions with wrap, `ggally_*` functions do not require the GGally namespace (#269) * Exported `eval_data_col`, `mapping_string`, and `mapping_swap_x_y` (5d157f6) * Exported `is_horizontal` and `is_character_column` (#270) * Logical values are now treated as discrete (#272) `ggmatrix` * `progress` parameter added to ggmatrix (and appropriate parent functions). Allows for `TRUE`, `FALSE`, `NULL`, and `function(pm){...}` (#271) `ggnostic` * Cooks distance cutoff is now at F_{p, n - p}(0.5) (#274) `ggnet2` * Replaced loading packages with loading namespaces(#262) `ggally_smooth` * Added `shrink` and `se` parameters to `ggally_smooth` (#247) `ggcoef` * Added `sort` parameter to sort by beta values (#273) `ggparcoord` * Fixed bug where x axis breaks and labels did not appear when `splineFactor = TRUE` (#279) GGally 1.3.2 ----------------- `ggpairs` and `ggduo` * Removed warning where pure numeric names gave a warning (#238, @lepennec) * Fixed ordering issue with horizontal boxplots (#239) `ggparcoord` * Fixed missing `x` aes requirement when shadebox is provided (#237, @treysp) Package * Made igraph a non required dependency for tests (#240) GGally 1.3.1 ----------------- Added new dataset `psychademic` * See `?psychademic` for more details * (And updated the broken UCLA links) Added original ggmatrix theme * added function to set theme to have clear strip background and rearrange the strip positions * added parameter `switch` to ggmatrix (and friends) to allow for strip repositioning. See `?ggplot::facet_grid` for more documentation on `switch` (#223, #224) `ggsurv` error reporting * removed a one error check that is covered in other places (#222) `+.gg` * allow to add a list of items to a ggmatrix (#228) `ggmatrix.print` * fix strip issues with ggplot2 name update GGally 1.3.0 ----------------- `ggmatrix.print` - massive update! * Now prints with a ggplot2 facet'ed structure * Column titles are now placed in the strip of a plot matrix * If there are 16 plots or more, a progress bar is displayed automatically (if interactive). Please look at the documentation for `ggmatrix_gtable` more details. `ggmatrix` legend * A legend may be added with the `legend` parameter in `ggduo`, `ggpairs`, and `ggmatrix` * May specify a (length two) numeric plot coordinate * May specify a (length one) numeric plot position * May specify a legend object retrieved from `grab_legend` `ggnostic` - New function! * Produces a `ggmatrix` of diagnostic plots from a model object * Uses broom to retrieve model information * Each column of the plot matrix is a predictor variable. The rows can display the response variables, fitted points, residuals, standardized residuals, leave one out model sigma values, diagonals of the hat matrix, and cook's distance for each point. `ggfacet` - New function! * Produces single ggplot2 object * interface is very similar to `ggduo` and `ggpairs` `fn_switch` - New function! * Provide many functions in a list but only call one function at run time according to a mapping value * Useful for `ggnostic` for different behavior depending on the y variable * Allows for a 'default' value for the default switch case `ggmatrix` - allow custom labellers for facet labels * Added labeller parameter which is supplied to `ggplot2::facet_grid()` * Allows for labels with plotmath expressions `ggmatrix` and `ggplot2::last_plot()` * If a `ggmatrix` object is printed, `ggplot2::last_plot()` will return the plot matrix `ggmatrix` and ggplot2 labels * `ggplot2::labs` `+`'ed to a ggmatrix object * `ggplot2::xlab` and `ggplot2::ylab` may be `+`'ed to a ggmatrix object * `ggplot2::ggtitle` `+`'ed to a ggmatrix object * (anything that returns a class of "labels" may be added to a ggmatrix object) `ggmatrix` and `ggplot2::ggsave()` * `ggsave` now works with `ggmatrix` objects `ggpairs` and `ggduo` check for cardinality (#197) * Before creating a ggmatrix object, a check is made for character/factor columns * If there are more than 15 (default) unique combinations, an error is thrown. * Setting `cardinality_threshold` parameter to a higher value can fix the problem (knowing single cell plots may take more time to produce) * Setting `cardinality_threshold` parameter to `NULL` can stop the check `ggmatrix` plot proportions * `ggmatrix` can set the plot proportions with the parameters `xProportions` and `yProportions` * These will change the relative size of the plot panels produced. `ggally_cor` colour aesthetic * color must be a non-numeric value `ggsurv` * added boolean to allow for legend to not be sorted * fixed bug where censored points with custom color didn't match properly (#185) Vignettes * vignettes are now displayed using `packagedocs`. More info at http://hafen.github.io/packagedocs/ `ggally_box_no_facet` and `ggally_dot_no_facet` * New methods added as defaults to pair with new ggmatrix print method GGally 1.2.0 ----------------- install requirements * relaxed install requirements on grid (5d06dfc, d57469a, 933bb14, 73b314d) ggduo - New! * plot two grouped data in a plot matrix (#173) * helpful for plotting two sets of columns, multivariate analysis, and canonical correlation analysis * be sure to check out the examples! ggally_smooth_loess - New! * uses the loess method with drawing a line (1552f96) ggally_smooth_lm - New! * uses the lm method with drawing a line (1552f96) * alias of ggally_smooth ggmatrix.print * fixed bug strips where causing spacing issue when printing axis labels (174630d) ggnetworkmap * fixed bug where checking for the package 'intergraph' couldn't be reached ggsurv * changed default of plotting multiple censored data color to match the survival line package testing * added many more tests! GGally 1.1.0 ----------------- ggcoef - New! * plot model coefficients with broom and ggplot2 PR#162 * Plotting model coefficients (http://www.r-statistics.com/2010/07/visualization-of-regression-coefficients-in-r/) gglegend - New! * pull out the legend of a plot which can also be used in ggpairs PR#155, PR#169 ggally_densityDiag * fixed bug where '...' was not respected (d0fe633) ggally_smooth * added 'method' parameter (411213c) ggally_ratio * Does not call ggfluctuation2 anymore. PR#165 ggcorr * fixed issue with unnamed correlation matrix used as input PR#146 * fixed issue undesired shifting when layout.exp was > 0 PR#171 ggfluctuation2 * is being deprecated. Please use ggally_ratio instead PR#165 ggnetworkmap * fixed issue with overlaying network on a world map PR#157 ggparcoord * Fixed odd bug where a list was trying to be forced as a double PR#162 ggpairs * Fixed improperly rotated axes with ggally_ratio PR#165 ggscatmat * added 'corMethod' parameter for use in upper triangle PR#145 ggsurv * size.est and size.ci parameters added PR#153 * ordering changed to reflect survival time PR#147 * added a vignette PR#154 wrap * documentation updated PR#152 * changes default behavior only. If an argument is supplied, the argument will take precedence github chat * https://gitter.im/ggobi/ggally is the place to visit for general questions. travis-ci * cache packages for faster checking * install covr and lintr from github for testing purposes GGally 1.0.1 ----------------- ggparcoord * fix handling of factor group variable PR#131 ggscatmat * force all char columns to factors PR#134 print.ggmatrix * add boolean for grid.newpage ggmatrix print method PR#126 GGally 1.0.0 ----------------- ggplot2 * GGally has been upgraded to run on the latest ggplot2 v1.1.0. PR#109 New functions * ggmatrix. Make a generic matrix of ggplot2 plots * ggnetworkmap. Plot a network with ggplot2 suitable for overlay on a ggmap::map ggplot, or other ggplot * ggnet2. Function for plotting network objects using ggplot2, with additional control over graphical parameters that are not supported by the ggnet function Vignettes * glyph - new! * ggmatrix - new! * ggnetworkmap - new! * ggpairs - new! * ggscatmat - new! ggmatrix * allows for bracket notation when getting or setting plots. PR#61 * full control over axis labels and axis text. PR#107, PR#111 ggpairs * is now wrapper to ggmatrix * takes in 'wrapped' functions. This better handles the case of many different parameters being supplied to different plot types. PR#90 * dates are better handled in ggpairs. Still room for improvement for default behavior, but they do not cause errors. PR#58, PR#59 * displays a 'NA' plot when all or a combination of the data is NA. PR#119 ggcorr * legend title expressions may be used. PR#55 * handles objects that may be coerced into a data.frame PR#70 gglyph * changed geom_line to geom_path in gglyph. Fixes ordering issue. PR#51 ggparcoord * remaining columns are passed through so aesthetics may be added later. PR#54 * fixed parcoord ordering issues with odd names. PR#106 * fixed scaling when unique length equals 1. PR#122 ggsurv * color censored marks the same color as the line. PR#74 * allow for different censored color marks. PR#113 ggally_density * add fake data points to extend the limits of the stat_density2d. PR#114 ggally_na * new plot type! Data * removed cityServiceFirms * added twitter_spambots GGally/inst/0000755000176200001440000000000015050621236012406 5ustar liggesusersGGally/inst/WORDLIST0000644000176200001440000000234415050621236013603 0ustar liggesusersAST Aes BLK Biometrics Broomify CMD ColorBrewer DRB Environmetrics FGA FGM FGP FTA FTM FlowingData Fruchterman GSS Gb Heptapot Herzberg Homewood Hout JSM Jibum Jordano Kaplan Kutner Liu Lubischew Marsden McGraw Mengjia Murrell NORC Nachtsheim Neter ORCID Opsahl PTS PV Programme RColorBrewer RStudio Reingold SCIE SENWGT STL Springer Statlib Storrs Su's TRB Tian Wickham's Yau Yu Zheng aede aedeagus aes anova api axisLabels axisVars barDiag bb blankDiag broomify'ed centerObs ci cityServiceFirms cloudhigh cloudlow cloudmid cmu codebook colour colours concinna corMethod covr dae densityDiag df dfc diag directedness edu facet'ed fe finrela formatter geocoded geoms ggally ggbivariate ggcoef ggcorr ggduo ggfluctuation gglegend gglyph ggmap ggmatrix ggnet ggnetworkmap ggnostic ggpairs ggparcoord ggplot ggscatmat ggsurv ggtable gidp github glyphmap glyphplot grey gridlines hbp heikertingeri heptapotamica herdsz hjust http ibb ide idre igraph ing intergraph labelled labeller labellers linetype lintr lm loess lon lowertriangle lt magrittr na naDiag newpage num param parcoord plotmath preallocates rbi sb scagnostic scagnostics scaler se shadebox spambots stratums surftemp th tidiers travis truthy ucla univariately uppertriangle vjust wtsall www GGally/README.md0000644000176200001440000000265415036241467012727 0ustar liggesusers# [GGally](http://ggobi.github.io/ggally/): Extension to [ggplot2](https://ggplot2.tidyverse.org/) [![CRAN_Status_Badge](http://www.r-pkg.org/badges/version/GGally)](https://cran.r-project.org/package=GGally) [![](http://cranlogs.r-pkg.org/badges/GGally)](https://cran.r-project.org/package=GGally) [![R-CMD-check](https://github.com/ggobi/ggally/actions/workflows/R-CMD-check.yaml/badge.svg)](https://github.com/ggobi/ggally/actions/workflows/R-CMD-check.yaml) [![DOI](https://zenodo.org/badge/22529/ggobi/ggally.svg)](https://zenodo.org/badge/latestdoi/22529/ggobi/ggally) [![RStudio community](https://img.shields.io/badge/community-GGally-blue?style=social&logo=rstudio&logoColor=75AADB)](https://forum.posit.co/tags/c/general/17/ggally) [`ggplot2`](https://ggplot2.tidyverse.org/) is a plotting system for R based on the grammar of graphics. [`GGally`](https://ggobi.github.io/ggally/) extends ggplot2 by adding several functions to reduce the complexity of combining geoms with transformed data. Some of these functions include a pairwise plot matrix, a scatterplot plot matrix, a parallel coordinates plot, a survival plot, and several functions to plot networks. ## Installation To install this package from GitHub or [CRAN](https://cran.r-project.org/package=GGally), do the following from the R console: ```r # Github pak::pak("ggobi/ggally") ``` ```r # CRAN install.packages("GGally") ``` GGally/build/0000755000176200001440000000000015050662136012534 5ustar liggesusersGGally/build/stage23.rdb0000644000176200001440000002153315050662136014501 0ustar liggesusers‹Ý}mwÓȶ¦óž!ÂKèNP; Hb’ðÒ¤  MH0Û«Û–l+¶Y2’œ—ÃêYóîÌ—ù³ÖùçOÌ|œÏ÷Ã]÷ã|8=µ¥GvÙ‘T’å^—µŠg;–µwí½kïªR©ê—©Tª7Õ?Àþï#òœó9ÕGx‘gö¤úS# ç®JÏ]1e[)JùCÉ4Kо´" I7lI)ª6}Q–õb*ÕßËýv0[ühË%FñwzºõêÕúëÖ‹-³`*»LŒQúä|Ó(s lúÕûÕ®ª)ŒìO¹ÿþ£å’¾u½Ð"ÂÀ»ùZ®Vô‚QTõR‹|/ÐåŠbµÜvx½~‡Ô?[~0b«ì¶\©2‰NÓkÿçâÿúo¥ÜåÖ;4ÙòîÜëUs{ëí‹_ ¶§+ç£íÃf˜”A²µˆfgª¦ºÇŒ˜Ù“ÍÌ®¡ÓÊ”JíoŸnß;¨Ü;X.Üþø`ïóçE­ =Ø¿Íþ•ª™LÖ®T ÊÛ÷Ïže²ùšªåââòÝûK·ïÞ•ïgž?—5í0S‘õŒ\dÖ6>–JÙ6Õƒ…l«;ôî[¤úÐQ©\õx*ù£Õ®tIÝ'½59FÏ 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Õ‰—ÛM&fãºÛZÄaÜ»ënÒÆu«Þ¸Üp·«Æ½ÞÆcÜs̸ÎnLú¤!ä^«í|,voÑ‘°›±˜;3Þ^sú®ZpVZ‡ëGˆòcýqôê$sbÃã¥ðVäÏ{”@K]°â*x{[»¬[kBKöÒ<е]›U ò1D{ÜeC>oã1äôL»ëB ¹Á§AOGò^ÛÆY˜]œc†­ÛØù¼|#¼¥ÿ £Í"G³ôSðö0¶&‹WÅSé3Hó,Ö&;Ëä¢W¼YÎI:íº*-3Š”Qá º ãQŸcrþÆ\lñ ½±¶ùv=´df#VE.0ËZîÜÒ1}öuxu>‡ „ܰ;¢Ð险h(–sbÖN9K¥HÅÎû±¡ý ¦A§# :@Ú -Ë ð'Œï-ñðAågðö0ž ²0#½³Ü]ÅŒš]­ÙôˆH–ª¦j˜G½0´Ð/!èËX=îø)1²tøö± #M‰ù²É)r¥ª)~ø^t{«uCOàû^QÄ4à¿ áOïßkT;%Ruº¢õ ?ýí4ý ýù#ÕXâ2Õ5éBrYÐÑÕSüöIšÓ$Mó©ô]ýpCo‰ã¸ÏYî7þRÿüÿ£¾‹>ëGGally/man/0000755000176200001440000000000015050662137012211 5ustar liggesusersGGally/man/pipe.Rd0000644000176200001440000000066015050621236013432 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/utils-pipe.R \name{\%>\%} \alias{\%>\%} \title{Pipe operator} \usage{ lhs \%>\% rhs } \arguments{ \item{lhs}{A value or the magrittr placeholder.} \item{rhs}{A function call using the magrittr semantics.} } \value{ The result of calling \code{rhs(lhs)}. } \description{ See \code{magrittr::\link[magrittr:pipe]{\%>\%}} for details. } \keyword{internal} GGally/man/ggally_dot_and_box.Rd0000644000176200001440000000163514526730006016322 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{ggally_dot_and_box} \alias{ggally_dot_and_box} \title{Box and dot plot} \usage{ ggally_dot_and_box(data, mapping, ..., boxPlot = TRUE) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used} \item{...}{parameters passed to either geom_jitter or geom_boxplot} \item{boxPlot}{boolean to decide to plot either box plots (TRUE) or dot plots (FALSE)} } \description{ Place box plots or dot plots on the graph } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) p_(ggally_dot_and_box( tips, mapping = ggplot2::aes(x = total_bill, y = sex, color = sex), boxPlot = TRUE )) p_(ggally_dot_and_box( tips, mapping = ggplot2::aes(x = total_bill, y = sex, color = sex), boxPlot = FALSE )) } \author{ Barret Schloerke } \keyword{internal} GGally/man/ggts.Rd0000644000176200001440000000131013666472400013442 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggnostic.R \name{ggts} \alias{ggts} \title{Multiple time series} \usage{ ggts(..., columnLabelsX = NULL, xlab = "time") } \arguments{ \item{...}{supplied directly to \code{\link{ggduo}}} \item{columnLabelsX}{remove top strips for the X axis by default} \item{xlab}{defaults to "time"} } \value{ \code{\link{ggmatrix}} object } \description{ GGally implementation of ts.plot. Wraps around the ggduo function and removes the column strips } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive p_(ggts(pigs, "time", c("gilts", "profit", "s_per_herdsz", "production", "herdsz"))) } GGally/man/add_and_overwrite_aes.Rd0000644000176200001440000000132314527265752017021 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggpairs.R \name{add_and_overwrite_aes} \alias{add_and_overwrite_aes} \title{Add new aes} \usage{ add_and_overwrite_aes(current, new) } \value{ aes_ output } \description{ Add new aesthetics to a previous aes. } \examples{ data(diamonds, package = "ggplot2") diamonds.samp <- diamonds[sample(1:dim(diamonds)[1], 1000), ] pm <- ggpairs(diamonds.samp, columns = 5:7, mapping = ggplot2::aes(color = color), upper = list(continuous = "cor", mapping = ggplot2::aes(color = clarity)), lower = list(continuous = "cor", mapping = ggplot2::aes(color = cut)), title = "Diamonds Sample" ) str(pm) } \author{ Barret Schloerke } \keyword{internal} GGally/man/eval_data_col.Rd0000644000176200001440000000101213663637143015256 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{eval_data_col} \alias{eval_data_col} \title{Evaluate data column} \usage{ eval_data_col(data, aes_col) } \arguments{ \item{data}{data set to evaluate the data with} \item{aes_col}{Single value from an \code{ggplot2::\link[ggplot2]{aes}(...)} object} } \value{ Aes mapping with the x and y values switched } \description{ Evaluate data column } \examples{ mapping <- ggplot2::aes(Petal.Length) eval_data_col(iris, mapping$x) } GGally/man/wrap.Rd0000644000176200001440000000661514527265752013473 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggpairs_internal_plots.R \name{wrap_fn_with_param_arg} \alias{wrap_fn_with_param_arg} \alias{wrapp} \alias{wrap} \alias{wrap_fn_with_params} \title{Wrap a function with different parameter values} \usage{ wrap_fn_with_param_arg( funcVal, params = NULL, funcArgName = deparse(substitute(funcVal)) ) wrapp(funcVal, params = NULL, funcArgName = deparse(substitute(funcVal))) wrap(funcVal, ..., funcArgName = deparse(substitute(funcVal))) wrap_fn_with_params(funcVal, ..., funcArgName = deparse(substitute(funcVal))) } \arguments{ \item{funcVal}{function that the \code{params} will be applied to. The function should follow the api of \code{function(data, mapping, ...)\{\}}. \code{funcVal} is allowed to be a string of one of the \code{ggally_NAME} functions, such as \code{"points"} for \code{ggally_points} or \code{"facetdensity"} for \code{ggally_facetdensity}.} \item{params}{named vector or list of parameters to be applied to the \code{funcVal}} \item{funcArgName}{name of function to be displayed} \item{...}{named parameters to be supplied to \code{wrap_fn_with_param_arg}} } \value{ a \code{function(data, mapping, ...)\{\}} that will wrap the original function with the parameters applied as arguments } \description{ Wraps a function with the supplied parameters to force different default behavior. This is useful for functions that are supplied to ggpairs. It allows you to change the behavior of one function, rather than creating multiple functions with different parameter settings. } \details{ \code{wrap} is identical to \code{wrap_fn_with_params}. These function take the new parameters as arguments. \code{wrapp} is identical to \code{wrap_fn_with_param_arg}. These functions take the new parameters as a single list. The \code{params} and \code{fn} attributes are there for debugging purposes. If either attribute is altered, the function must be re-wrapped to have the changes take effect. } \examples{ # small function to display plots only if it's interactive p_ <- GGally::print_if_interactive # example function that prints 'val' fn <- function(data, mapping, val = 2) { print(val) } fn(data = NULL, mapping = NULL) # 2 # wrap function to change default value 'val' to 5 instead of 2 wrapped_fn1 <- wrap(fn, val = 5) wrapped_fn1(data = NULL, mapping = NULL) # 5 # you may still supply regular values wrapped_fn1(data = NULL, mapping = NULL, val = 3) # 3 # wrap function to change 'val' to 5 using the arg list wrapped_fn2 <- wrap_fn_with_param_arg(fn, params = list(val = 5)) wrapped_fn2(data = NULL, mapping = NULL) # 5 # change parameter settings in ggpairs for a particular function ## Goal output: regularPlot <- ggally_points( iris, ggplot2::aes(Sepal.Length, Sepal.Width), size = 5, color = "red" ) p_(regularPlot) # Wrap ggally_points to have parameter values size = 5 and color = 'red' w_ggally_points <- wrap(ggally_points, size = 5, color = "red") wrappedPlot <- w_ggally_points( iris, ggplot2::aes(Sepal.Length, Sepal.Width) ) p_(wrappedPlot) # Double check the aes parameters are the same for the geom_point layer identical(regularPlot$layers[[1]]$aes_params, wrappedPlot$layers[[1]]$aes_params) # Use a wrapped function in ggpairs pm <- ggpairs(iris, 1:3, lower = list(continuous = wrap(ggally_points, size = 5, color = "red"))) p_(pm) pm <- ggpairs(iris, 1:3, lower = list(continuous = w_ggally_points)) p_(pm) } GGally/man/ggmatrix_gtable.Rd0000644000176200001440000000170215022360455015635 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggmatrix_gtable.R \name{ggmatrix_gtable} \alias{ggmatrix_gtable} \title{\code{\link{ggmatrix}} \pkg{gtable} object} \usage{ ggmatrix_gtable( pm, ..., progress = NULL, progress_format = formals(ggmatrix_progress)$format ) } \arguments{ \item{pm}{\code{\link{ggmatrix}} object to be plotted} \item{...}{ignored} \item{progress, progress_format}{\ifelse{html}{\href{https://lifecycle.r-lib.org/articles/stages.html#deprecated}{\figure{lifecycle-deprecated.svg}{options: alt='[Deprecated]'}}}{\strong{[Deprecated]}} Please use the 'progress' parameter in your \code{\link{ggmatrix}}-like function. See \code{\link{ggmatrix_progress}} for a few examples.} } \description{ Specialized method to print the \code{\link{ggmatrix}} object. } \examples{ data(tips) pm <- ggpairs(tips, c(1, 3, 2), mapping = ggplot2::aes(color = sex)) ggmatrix_gtable(pm) } \author{ Barret Schloerke } GGally/man/nba_ppg_2008.Rd0000644000176200001440000000305515047655270014570 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/data-nba_ppg_2008.R \docType{data} \name{nba_ppg_2008} \alias{nba_ppg_2008} \title{NBA Player Statistics for 2008-2009 Season} \format{ A data frame with 50 rows and 21 variables } \source{ Data originally collected from FlowingData tutorial } \usage{ data(nba_ppg_2008) } \description{ This dataset contains performance statistics for NBA players from the 2008-2009 season. The data includes top-performing players with their scoring averages and various basketball performance metrics. } \details{ The dataset contains the following variables: \itemize{ \item Name - Player name \item G - Games played \item MIN - Minutes per game \item PTS - Points per game \item FGM - Field goals made per game \item FGA - Field goal attempts per game \item FGP - Field goal percentage \item FTM - Free throws made per game \item FTA - Free throw attempts per game \item FTP - Free throw percentage \item X3PM - Three-point field goals made per game \item X3PA - Three-point field goal attempts per game \item X3PP - Three-point field goal percentage \item ORB - Offensive rebounds per game \item DRB - Defensive rebounds per game \item TRB - Total rebounds per game \item AST - Assists per game \item STL - Steals per game \item BLK - Blocks per game \item TO - Turnovers per game \item PF - Personal fouls per game } } \references{ FlowingData (2010) How to Make a Heatmap - a Quick and Easy Solution. \url{https://flowingdata.com/2010/01/21/how-to-make-a-heatmap-a-quick-and-easy-solution/} } \keyword{datasets} GGally/man/ggally_points.Rd0000644000176200001440000000145614527265752015373 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{ggally_points} \alias{ggally_points} \title{Scatter plot} \usage{ ggally_points(data, mapping, ...) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used} \item{...}{other arguments are sent to geom_point} } \description{ Make a scatter plot with a given data set. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(mtcars) p_(ggally_points(mtcars, mapping = ggplot2::aes(disp, hp))) p_(ggally_points(mtcars, mapping = ggplot2::aes(disp, hp))) p_(ggally_points( mtcars, mapping = ggplot2::aes( x = disp, y = hp, color = as.factor(cyl), size = gear ) )) } \author{ Barret Schloerke } \keyword{hplot} GGally/man/mapping_color_to_fill.Rd0000644000176200001440000000053313665760216017051 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggpairs.R \name{mapping_color_to_fill} \alias{mapping_color_to_fill} \title{Aesthetic mapping color fill} \usage{ mapping_color_to_fill(current) } \arguments{ \item{current}{the current aesthetics} } \description{ Replace the fill with the color and make color NULL. } GGally/man/lowertriangle.Rd0000644000176200001440000000153514321332407015354 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggscatmat.R \name{lowertriangle} \alias{lowertriangle} \title{lowertriangle - rearrange dataset as the preparation of \code{\link{ggscatmat}} function} \usage{ lowertriangle(data, columns = 1:ncol(data), color = NULL) } \arguments{ \item{data}{a data matrix. Should contain numerical (continuous) data.} \item{columns}{an option to choose the column to be used in the raw dataset. Defaults to \code{1:ncol(data)}} \item{color}{an option to choose a factor variable to be grouped with. Defaults to \code{(NULL)}} } \description{ function for making the melted dataset used to plot the lowertriangle scatterplots. } \examples{ data(flea) head(lowertriangle(flea, columns = 2:4)) head(lowertriangle(flea)) head(lowertriangle(flea, color = "species")) } \author{ Mengjia Ni, Di Cook } GGally/man/is_horizontal.Rd0000644000176200001440000000140013663637143015366 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{is_horizontal} \alias{is_horizontal} \alias{is_character_column} \title{Check if plot is horizontal} \usage{ is_horizontal(data, mapping, val = "y") is_character_column(data, mapping, val = "y") } \arguments{ \item{data}{data used in ggplot2 plot} \item{mapping}{ggplot2 \code{aes()} mapping} \item{val}{key to retrieve from \code{mapping}} } \value{ Boolean determining if the data is a character-like data } \description{ Check if plot is horizontal } \examples{ is_horizontal(iris, ggplot2::aes(Sepal.Length, Species)) # TRUE is_horizontal(iris, ggplot2::aes(Sepal.Length, Species), "x") # FALSE is_horizontal(iris, ggplot2::aes(Sepal.Length, Sepal.Width)) # FALSE } GGally/man/v1_ggmatrix_theme.Rd0000644000176200001440000000256015022360455016112 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/deprecated.R \name{v1_ggmatrix_theme} \alias{v1_ggmatrix_theme} \title{Modify a \code{\link{ggmatrix}} object by adding an \pkg{ggplot2} object to all} \usage{ v1_ggmatrix_theme() } \description{ \ifelse{html}{\href{https://lifecycle.r-lib.org/articles/stages.html#deprecated}{\figure{lifecycle-deprecated.svg}{options: alt='[Deprecated]'}}}{\strong{[Deprecated]}} This function allows cleaner axis labels for your plots, but is deprecated. You can achieve the same effect by specifying strip's background and placement properties (see Examples). } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive # Cleaner axis labels with v1_ggmatrix_theme p_(ggpairs(iris, 1:2) + v1_ggmatrix_theme()) # Move the column names to the left and bottom p_(ggpairs(iris, 1:2, switch = "both") + v1_ggmatrix_theme()) # Manually specifying axis labels properties p_( ggpairs(iris, 1:2) + theme( strip.background = element_rect(fill = "white"), strip.placement = "outside" ) ) # This way you have even more control over how the final plot looks. # For example, if you want to set the background color to yellow: p_( ggpairs(iris, 1:2) + theme( strip.background = element_rect(fill = "yellow"), strip.placement = "outside" ) ) } \keyword{internal} GGally/man/ggmatrix.Rd0000644000176200001440000001121513761572054014327 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggmatrix.R \name{ggmatrix} \alias{ggmatrix} \title{\pkg{ggplot2} plot matrix} \usage{ ggmatrix( plots, nrow, ncol, xAxisLabels = NULL, yAxisLabels = NULL, title = NULL, xlab = NULL, ylab = NULL, byrow = TRUE, showStrips = NULL, showAxisPlotLabels = TRUE, showXAxisPlotLabels = TRUE, showYAxisPlotLabels = TRUE, labeller = NULL, switch = NULL, xProportions = NULL, yProportions = NULL, progress = NULL, data = NULL, gg = NULL, legend = NULL ) } \arguments{ \item{plots}{list of plots to be put into matrix} \item{nrow, ncol}{number of rows and columns} \item{xAxisLabels, yAxisLabels}{strip titles for the x and y axis respectively. Set to \code{NULL} to not be displayed} \item{title, xlab, ylab}{title, x label, and y label for the graph. Set to \code{NULL} to not be displayed} \item{byrow}{boolean that determines whether the plots should be ordered by row or by column} \item{showStrips}{boolean to determine if each plot's strips should be displayed. \code{NULL} will default to the top and right side plots only. \code{TRUE} or \code{FALSE} will turn all strips on or off respectively.} \item{showAxisPlotLabels, showXAxisPlotLabels, showYAxisPlotLabels}{booleans that determine if the plots axis labels are printed on the X (bottom) or Y (left) part of the plot matrix. If \code{showAxisPlotLabels} is set, both \code{showXAxisPlotLabels} and \code{showYAxisPlotLabels} will be set to the given value.} \item{labeller}{labeller for facets. See \code{\link[ggplot2]{labellers}}. Common values are \code{"label_value"} (default) and \code{"label_parsed"}.} \item{switch}{switch parameter for facet_grid. See \code{ggplot2::\link[ggplot2]{facet_grid}}. By default, the labels are displayed on the top and right of the plot. If \code{"x"}, the top labels will be displayed to the bottom. If \code{"y"}, the right-hand side labels will be displayed to the left. Can also be set to \code{"both"}} \item{xProportions, yProportions}{Value to change how much area is given for each plot. Either \code{NULL} (default), numeric value matching respective length, or \code{grid::\link[grid]{unit}} object with matching respective length} \item{progress}{\code{NULL} (default) for a progress bar in interactive sessions with more than 15 plots, \code{TRUE} for a progress bar, \code{FALSE} for no progress bar, or a function that accepts at least a plot matrix and returns a new \code{progress::\link[progress]{progress_bar}}. See \code{\link{ggmatrix_progress}}.} \item{data}{data set using. This is the data to be used in place of 'ggally_data' if the plot is a string to be evaluated at print time} \item{gg}{\pkg{ggplot2} theme objects to be applied to every plot} \item{legend}{May be the two objects described below or the default \code{NULL} value. The legend position can be moved by using ggplot2's theme element \code{pm + theme(legend.position = "bottom")} \describe{\item{a numeric vector of length 2}{provides the location of the plot to use the legend for the plot matrix's legend. Such as \code{legend = c(3,5)} which will use the legend from the plot in the third row and fifth column}\item{a single numeric value}{provides the location of a plot according to the display order. Such as \code{legend = 3} in a plot matrix with 2 rows and 5 columns displayed by column will return the plot in position \code{c(1,2)}}\item{a object from \code{\link{grab_legend}()}}{a predetermined plot legend that will be displayed directly}}} } \description{ Make a generic matrix of \pkg{ggplot2} plots. } \section{Memory usage}{ Now that the \code{\link{print.ggmatrix}} method uses a large \pkg{gtable} object, rather than print each plot independently, memory usage may be of concern. From small tests, memory usage flutters around \code{object.size(data) * 0.3 * length(plots)}. So, for a 80Mb random noise dataset with 100 plots, about 2.4 Gb of memory needed to print. For the 3.46 Mb diamonds dataset with 100 plots, about 100 Mb of memory was needed to print. The benefits of using the \pkg{ggplot2} format greatly outweigh the price of about 20\% increase in memory usage from the prior ad-hoc print method. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive plotList <- list() for (i in 1:6) { plotList[[i]] <- ggally_text(paste("Plot #", i, sep = "")) } pm <- ggmatrix( plotList, 2, 3, c("A", "B", "C"), c("D", "E"), byrow = TRUE ) p_(pm) pm <- ggmatrix( plotList, 2, 3, xAxisLabels = c("A", "B", "C"), yAxisLabels = NULL, byrow = FALSE, showXAxisPlotLabels = FALSE ) p_(pm) } \author{ Barret Schloerke } \keyword{hplot} GGally/man/ggally_density.Rd0000644000176200001440000000203314527265752015526 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{ggally_density} \alias{ggally_density} \title{Bivariate density plot} \usage{ ggally_density(data, mapping, ...) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used} \item{...}{parameters sent to either stat_density2d or geom_density2d} } \description{ Make a 2D density plot from a given data. } \details{ The aesthetic "fill" determines whether or not \code{stat_density2d} (filled) or \code{geom_density2d} (lines) is used. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) p_(ggally_density(tips, mapping = ggplot2::aes(x = total_bill, y = tip))) p_(ggally_density( tips, mapping = ggplot2::aes(total_bill, tip, fill = after_stat(level)) )) p_(ggally_density( tips, mapping = ggplot2::aes(total_bill, tip, fill = after_stat(level)) ) + ggplot2::scale_fill_gradient(breaks = c(0.05, 0.1, 0.15, 0.2))) } \author{ Barret Schloerke } \keyword{hplot} GGally/man/ggnet2.Rd0000644000176200001440000003267415022037246013676 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggnet2.R \name{ggnet2} \alias{ggnet2} \title{Network plot} \usage{ ggnet2( net, mode = "fruchtermanreingold", layout.par = NULL, layout.exp = 0, alpha = 1, color = "grey75", shape = 19, size = 9, max_size = 9, na.rm = NA, palette = NULL, alpha.palette = NULL, alpha.legend = NA, color.palette = palette, color.legend = NA, shape.palette = NULL, shape.legend = NA, size.palette = NULL, size.legend = NA, size.zero = FALSE, size.cut = FALSE, size.min = NA, size.max = NA, label = FALSE, label.alpha = 1, label.color = "black", label.size = max_size/2, label.trim = FALSE, node.alpha = alpha, node.color = color, node.label = label, node.shape = shape, node.size = size, edge.alpha = 1, edge.color = "grey50", edge.lty = "solid", edge.size = 0.25, edge.label = NULL, edge.label.alpha = 1, edge.label.color = label.color, edge.label.fill = "white", edge.label.size = max_size/2, arrow.size = 0, arrow.gap = 0, arrow.type = "closed", legend.size = 9, legend.position = "right", ... ) } \arguments{ \item{net}{an object of class \code{\link[network]{network}}, or any object that can be coerced to this class, such as an adjacency or incidence matrix, or an edge list: see \link[network]{edgeset.constructors} and \link[network]{network} for details. If the object is of class \link[igraph:aaa-igraph-package]{igraph} and the \link[intergraph:intergraph-package]{intergraph} package is installed, it will be used to convert the object: see \code{\link[intergraph]{asNetwork}} for details.} \item{mode}{a placement method from those provided in the \code{\link[sna]{sna}} package: see \link[sna:gplot.layout]{gplot.layout} for details. Also accepts the names of two numeric vertex attributes of \code{net}, or a matrix of numeric coordinates, in which case the first two columns of the matrix are used. Defaults to the Fruchterman-Reingold force-directed algorithm.} \item{layout.par}{options to be passed to the placement method, as listed in \link[sna]{gplot.layout}. Defaults to \code{NULL}.} \item{layout.exp}{a multiplier to expand the horizontal axis if node labels get clipped: see \link[scales]{expand_range} for details. Defaults to \code{0} (no expansion).} \item{alpha}{the level of transparency of the edges and nodes, which might be a single value, a vertex attribute, or a vector of values. Also accepts \code{"mode"} on bipartite networks (see 'Details'). Defaults to \code{1} (no transparency).} \item{color}{the color of the nodes, which might be a single value, a vertex attribute, or a vector of values. Also accepts \code{"mode"} on bipartite networks (see 'Details'). Defaults to \code{grey75}.} \item{shape}{the shape of the nodes, which might be a single value, a vertex attribute, or a vector of values. Also accepts \code{"mode"} on bipartite networks (see 'Details'). Defaults to \code{19} (solid circle).} \item{size}{the size of the nodes, in points, which might be a single value, a vertex attribute, or a vector of values. Also accepts \code{"indegree"}, \code{"outdegree"}, \code{"degree"} or \code{"freeman"} to size the nodes by their unweighted degree centrality (\code{"degree"} and \code{"freeman"} are equivalent): see \code{\link[sna]{degree}} for details. All node sizes must be strictly positive. Also accepts \code{"mode"} on bipartite networks (see 'Details'). Defaults to \code{9}.} \item{max_size}{the \emph{maximum} size of the node when \code{size} produces nodes of different sizes, in points. Defaults to \code{9}.} \item{na.rm}{whether to subset the network to nodes that are \emph{not} missing a given vertex attribute. If set to any vertex attribute of \code{net}, the nodes for which this attribute is \code{NA} will be removed. Defaults to \code{NA} (does nothing).} \item{palette}{the palette to color the nodes, when \code{color} is not a color value or a vector of color values. Accepts named vectors of color values, or if \link[RColorBrewer:ColorBrewer]{RColorBrewer} is installed, any ColorBrewer palette name: see \code{\link[RColorBrewer:ColorBrewer]{RColorBrewer::brewer.pal()}} and \url{https://colorbrewer2.org/} for details. Defaults to \code{NULL}, which will create an array of grayscale color values if \code{color} is not a color value or a vector of color values.} \item{alpha.palette}{the palette to control the transparency levels of the nodes set by \code{alpha} when the levels are not numeric values. Defaults to \code{NULL}, which will create an array of alpha transparency values if \code{alpha} is not a numeric value or a vector of numeric values.} \item{alpha.legend}{the name to assign to the legend created by \code{alpha} when its levels are not numeric values. Defaults to \code{NA} (no name).} \item{color.palette}{see \code{palette}} \item{color.legend}{the name to assign to the legend created by \code{palette}. Defaults to \code{NA} (no name).} \item{shape.palette}{the palette to control the shapes of the nodes set by \code{shape} when the shapes are not numeric values. Defaults to \code{NULL}, which will create an array of shape values if \code{shape} is not a numeric value or a vector of numeric values.} \item{shape.legend}{the name to assign to the legend created by \code{shape} when its levels are not numeric values. Defaults to \code{NA} (no name).} \item{size.palette}{the palette to control the sizes of the nodes set by \code{size} when the sizes are not numeric values.} \item{size.legend}{the name to assign to the legend created by \code{size}. Defaults to \code{NA} (no name).} \item{size.zero}{whether to accept zero-sized nodes based on the value(s) of \code{size}. Defaults to \code{FALSE}, which ensures that zero-sized nodes are still shown in the plot and its size legend.} \item{size.cut}{whether to cut the size of the nodes into a certain number of quantiles. Accepts \code{TRUE}, which tries to cut the sizes into quartiles, or any positive numeric value, which tries to cut the sizes into that many quantiles. If the size of the nodes do not contain the specified number of distinct quantiles, the largest possible number is used. See \code{\link[stats]{quantile}} and \code{\link[base]{cut}} for details. Defaults to \code{FALSE} (does nothing).} \item{size.min}{whether to subset the network to nodes with a minimum size, based on the values of \code{size}. Defaults to \code{NA} (preserves all nodes).} \item{size.max}{whether to subset the network to nodes with a maximum size, based on the values of \code{size}. Defaults to \code{NA} (preserves all nodes).} \item{label}{whether to label the nodes. If set to \code{TRUE}, nodes are labeled with their vertex names. If set to a vector that contains as many elements as there are nodes in \code{net}, nodes are labeled with these. If set to any other vector of values, the nodes are labeled only when their vertex name matches one of these values. Defaults to \code{FALSE} (no labels).} \item{label.alpha}{the level of transparency of the node labels, as a numeric value, a vector of numeric values, or as a vertex attribute containing numeric values. Defaults to \code{1} (no transparency).} \item{label.color}{the color of the node labels, as a color value, a vector of color values, or as a vertex attribute containing color values. Defaults to \code{"black"}.} \item{label.size}{the size of the node labels, in points, as a numeric value, a vector of numeric values, or as a vertex attribute containing numeric values. Defaults to \code{max_size / 2} (half the maximum node size), which defaults to \code{4.5}.} \item{label.trim}{whether to apply some trimming to the node labels. Accepts any function that can process a character vector, or a strictly positive numeric value, in which case the labels are trimmed to a fixed-length substring of that length: see \code{\link[base]{substr}} for details. Defaults to \code{FALSE} (does nothing).} \item{node.alpha}{see \code{alpha}} \item{node.color}{see \code{color}} \item{node.label}{see \code{label}} \item{node.shape}{see \code{shape}} \item{node.size}{see \code{size}} \item{edge.alpha}{the level of transparency of the edges. Defaults to the value of \code{alpha}, which defaults to \code{1}.} \item{edge.color}{the color of the edges, as a color value, a vector of color values, or as an edge attribute containing color values. Defaults to \code{"grey50"}.} \item{edge.lty}{the linetype of the edges, as a linetype value, a vector of linetype values, or as an edge attribute containing linetype values. Defaults to \code{"solid"}.} \item{edge.size}{the size of the edges, in points, as a numeric value, a vector of numeric values, or as an edge attribute containing numeric values. All edge sizes must be strictly positive. Defaults to \code{0.25}.} \item{edge.label}{the labels to plot at the middle of the edges, as a single value, a vector of values, or as an edge attribute. Defaults to \code{NULL} (no edge labels).} \item{edge.label.alpha}{the level of transparency of the edge labels, as a numeric value, a vector of numeric values, or as an edge attribute containing numeric values. Defaults to \code{1} (no transparency).} \item{edge.label.color}{the color of the edge labels, as a color value, a vector of color values, or as an edge attribute containing color values. Defaults to \code{label.color}, which defaults to \code{"black"}.} \item{edge.label.fill}{the background color of the edge labels. Defaults to \code{"white"}.} \item{edge.label.size}{the size of the edge labels, in points, as a numeric value, a vector of numeric values, or as an edge attribute containing numeric values. All edge label sizes must be strictly positive. Defaults to \code{max_size / 2} (half the maximum node size), which defaults to \code{4.5}.} \item{arrow.size}{the size of the arrows for directed network edges, in points. See \code{\link[grid]{arrow}} for details. Defaults to \code{0} (no arrows).} \item{arrow.gap}{a setting aimed at improving the display of edge arrows by plotting slightly shorter edges. Accepts any value between \code{0} and \code{1}, where a value of \code{0.05} will generally achieve good results when the size of the nodes is reasonably small. Defaults to \code{0} (no shortening).} \item{arrow.type}{the type of the arrows for directed network edges. See \code{\link[grid]{arrow}} for details. Defaults to \code{"closed"}.} \item{legend.size}{the size of the legend symbols and text, in points. Defaults to \code{9}.} \item{legend.position}{the location of the plot legend(s). Accepts all \code{legend.position} values supported by \code{\link[ggplot2]{theme}}. Defaults to \code{"right"}.} \item{...}{other arguments passed to the \code{geom_text} object that sets the node labels: see \code{\link[ggplot2]{geom_text}} for details.} } \description{ Function for plotting network objects using \pkg{ggplot2}, with additional control over graphical parameters that are not supported by the \code{\link{ggnet}} function. Please visit \url{https://github.com/briatte/ggnet} for the latest version of ggnet2, and \url{https://briatte.github.io/ggnet/} for a vignette that contains many examples and explanations. } \details{ The degree centrality measures that can be produced through the \code{size} argument will take the directedness of the network into account, but will be unweighted. To compute weighted network measures, see the \code{tnet} package by Tore Opsahl (\code{help("tnet", package = "tnet")}). The nodes of bipartite networks can be mapped to their mode by passing the \code{"mode"} argument to any of \code{alpha}, \code{color}, \code{shape} and \code{size}, in which case the nodes of the primary mode will be mapped as \code{"actor"}, and the nodes of the secondary mode will be mapped as \code{"event"}. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive library(network) # random adjacency matrix x <- 10 ndyads <- x * (x - 1) density <- x / ndyads m <- matrix(0, nrow = x, ncol = x) dimnames(m) <- list(letters[1:x], letters[1:x]) m[row(m) != col(m)] <- runif(ndyads) < density m # random undirected network n <- network::network(m, directed = FALSE) n p_(ggnet2(n, label = TRUE)) p_(ggnet2(n, label = TRUE, shape = 15)) p_(ggnet2(n, label = TRUE, shape = 15, color = "black", label.color = "white")) # add vertex attribute x = network.vertex.names(n) x = ifelse(x \%in\% c("a", "e", "i"), "vowel", "consonant") n \%v\% "phono" = x p_(ggnet2(n, color = "phono")) p_(ggnet2(n, color = "phono", palette = c("vowel" = "gold", "consonant" = "grey"))) p_(ggnet2(n, shape = "phono", color = "phono")) if (require(RColorBrewer)) { # random groups n \%v\% "group" <- sample(LETTERS[1:3], 10, replace = TRUE) p_(ggnet2(n, color = "group", palette = "Set2")) } # random weights n \%e\% "weight" <- sample(1:3, network.edgecount(n), replace = TRUE) p_(ggnet2(n, edge.size = "weight", edge.label = "weight")) # edge arrows on a directed network p_(ggnet2(network(m, directed = TRUE), arrow.gap = 0.05, arrow.size = 10)) # Padgett's Florentine wedding data data(flo, package = "network") flo p_(ggnet2(flo, label = TRUE)) p_(ggnet2(flo, label = TRUE, label.trim = 4, vjust = -1, size = 3, color = 1)) p_(ggnet2(flo, label = TRUE, size = 12, color = "white")) } \seealso{ \code{\link{ggnet}} in this package, \code{\link[sna]{gplot}} in the \code{\link[sna]{sna}} package, and \code{\link[network]{plot.network}} in the \code{\link[network]{network}} package } \author{ Moritz Marbach and Francois Briatte, with help from Heike Hofmann, Pedro Jordano and Ming-Yu Liu } GGally/man/add_ref_lines.Rd0000644000176200001440000000107414321334313015250 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gglyph.R \name{add_ref_lines} \alias{add_ref_lines} \title{Add reference lines for each cell of the glyphmap.} \usage{ add_ref_lines(data, color = "white", size = 1.5, ...) } \arguments{ \item{data}{A glyphmap structure.} \item{color}{Set the color to draw in, default is "white"} \item{size}{Set the line size, default is 1.5} \item{...}{other arguments passed onto \code{\link[ggplot2:geom_path]{ggplot2::geom_line()}}} } \description{ Add reference lines for each cell of the glyphmap. } GGally/man/getPlot.Rd0000644000176200001440000000137614526730006014123 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggpairs_getput.R \name{getPlot} \alias{getPlot} \alias{[.ggmatrix} \title{Subset a \code{\link{ggmatrix}} object} \usage{ getPlot(pm, i, j) \method{[}{ggmatrix}(pm, i, j, ...) } \arguments{ \item{pm}{\code{\link{ggmatrix}} object to select from} \item{i}{row from the top} \item{j}{column from the left} \item{...}{ignored} } \description{ Retrieves the ggplot object at the desired location. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) plotMatrix2 <- ggpairs(tips[, 3:2], upper = list(combo = "denstrip")) p_(plotMatrix2[1, 2]) } \seealso{ \code{\link{putPlot}} } \author{ Barret Schloerke } \keyword{hplot} GGally/man/ggnetworkmap.Rd0000644000176200001440000002026315047655270015216 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggnetworkmap.R \name{ggnetworkmap} \alias{ggnetworkmap} \title{Network plot map overlay} \usage{ ggnetworkmap( gg, net, size = 3, alpha = 0.75, weight, node.group, node.color = NULL, node.alpha = NULL, ring.group, segment.alpha = NULL, segment.color = "grey", great.circles = FALSE, segment.size = 0.25, arrow.size = 0, label.nodes = FALSE, label.size = size/2, ... ) } \arguments{ \item{gg}{an object of class \code{ggplot}.} \item{net}{an object of class \code{\link[network]{network}}, or any object that can be coerced to this class, such as an adjacency or incidence matrix, or an edge list: see \link[network]{edgeset.constructors} and \link[network]{network} for details. If the object is of class \link[igraph:aaa-igraph-package]{igraph} and the \link[intergraph:intergraph-package]{intergraph} package is installed, it will be used to convert the object: see \code{\link[intergraph]{asNetwork}} for details.} \item{size}{size of the network nodes. Defaults to 3. If the nodes are weighted, their area is proportionally scaled up to the size set by \code{size}.} \item{alpha}{a level of transparency for nodes, vertices and arrows. Defaults to 0.75.} \item{weight}{if present, the unquoted name of a vertex attribute in \code{data}. Otherwise nodes are unweighted.} \item{node.group}{\code{NULL}, the default, or the unquoted name of a vertex attribute that will be used to determine the color of each node.} \item{node.color}{If \code{node.group} is null, a character string specifying a color.} \item{node.alpha}{transparency of the nodes. Inherits from \code{alpha}.} \item{ring.group}{if not \code{NULL}, the default, the unquoted name of a vertex attribute that will be used to determine the color of each node border.} \item{segment.alpha}{transparency of the vertex links. Inherits from \code{alpha}} \item{segment.color}{color of the vertex links. Defaults to \code{"grey"}.} \item{great.circles}{whether to draw edges as great circles using the \code{geosphere} package. Defaults to \code{FALSE}} \item{segment.size}{size of the vertex links, as a vector of values or as a single value. Defaults to 0.25.} \item{arrow.size}{size of the vertex arrows for directed network plotting, in centimeters. Defaults to 0.} \item{label.nodes}{label nodes with their vertex names attribute. If set to \code{TRUE}, all nodes are labelled. Also accepts a vector of character strings to match with vertex names.} \item{label.size}{size of the labels. Defaults to \code{size / 2}.} \item{...}{other arguments supplied to geom_text for the node labels. Arguments pertaining to the title or other items can be achieved through \pkg{ggplot2} methods.} } \description{ Plots a network with \pkg{ggplot2} suitable for overlay on a \pkg{ggmap} plot or \pkg{ggplot2} } \details{ This is a descendant of the original \code{ggnet} function. \code{ggnet} added the innovation of plotting the network geographically. However, \code{ggnet} needed to be the first object in the ggplot chain. \code{ggnetworkmap} does not. If passed a \code{ggplot} object as its first argument, such as output from \code{ggmap}, \code{ggnetworkmap} will plot on top of that chart, looking for vertex attributes \code{lon} and \code{lat} as coordinates. Otherwise, \code{ggnetworkmap} will generate coordinates using the Fruchterman-Reingold algorithm. This is a function for plotting graphs generated by \code{network} or \code{igraph} in a more flexible and elegant manner than permitted by ggnet. The function does not need to be the first plot in the ggplot chain, so the graph can be plotted on top of a map or other chart. Segments can be straight lines, or plotted as great circles. Note that the great circles feature can produce odd results with arrows and with vertices beyond the plot edges; this is a \pkg{ggplot2} limitation and cannot yet be fixed. Nodes can have two color schemes, which are then plotted as the center and ring around the node. The color schemes are selected by adding scale_fill_ or scale_color_ just like any other \pkg{ggplot2} plot. If there are no rings, scale_color sets the color of the nodes. If there are rings, scale_color sets the color of the rings, and scale_fill sets the color of the centers. Note that additional arguments in the ... are passed to geom_text for plotting labels. } \examples{ library(dplyr) # small function to display plots only if it's interactive p_ <- GGally::print_if_interactive invisible(lapply(c("ggplot2", "maps", "network", "sna"), base::library, character.only = TRUE)) ## Example showing great circles on a simple map of the USA if (require(airports) && require(network) && require(sna)) { dms_to_number <- function(dms) { parts <- strsplit(dms, "-")[[1]] degrees <- as.numeric(parts[1]) minutes <- as.numeric(parts[2]) / 60 seconds <- as.numeric(sub(parts[3], pattern = "N|W", replacement = "")) / 3600 direction <- if (grepl("W", parts[3])) -1 else 1 return(direction * (degrees + minutes + seconds)) } airports <- airports::usairports |> filter( !is.na(cert_type_date), grepl("N", arp_latitude), grepl("W", arp_longitude) ) |> mutate( lat = vapply(arp_latitude, dms_to_number, numeric(1)), long = vapply(arp_longitude, dms_to_number, numeric(1)) ) |> as.data.frame() rownames(airports) <- airports$location_id # select some random flights set.seed(123) flights <- data.frame( origin = sample(airports[200:400, ]$location_id, 200, replace = TRUE), destination = sample(airports[200:400, ]$location_id, 200, replace = TRUE) ) # convert to network flights <- network::network(flights, directed = TRUE) # add geographic coordinates flights \%v\% "lat" <- airports[network.vertex.names(flights), "lat"] flights \%v\% "lon" <- airports[network.vertex.names(flights), "long"] # drop isolated airports network::delete.vertices(flights, which(sna::degree(flights) < 2)) # compute degree centrality flights \%v\% "degree" <- sna::degree(flights, gmode = "digraph") # add random groups flights \%v\% "mygroup" <- sample(letters[1:4], network.size(flights), replace = TRUE) # create a map of the USA usa <- ggplot(map_data("usa"), aes(x = long, y = lat)) + geom_polygon(aes(group = group), color = "grey65", fill = "#f9f9f9", linewidth = 0.2 ) # overlay network data to map p <- ggnetworkmap( usa, flights, size = 4, great.circles = TRUE, node.group = mygroup, segment.color = "steelblue", ring.group = degree, weight = degree ) + coord_map("albers", lat0 = 45.5, lat1 = 29.5) p_(p) ## Exploring a community of spambots found on Twitter ## Data by Amos Elberg: see ?twitter_spambots for details data(twitter_spambots) # create a world map world <- fortify(map("world", plot = FALSE, fill = TRUE)) world <- ggplot(world, aes(x = long, y = lat)) + geom_polygon(aes(group = group), color = "grey65", fill = "#f9f9f9", linewidth = 0.2 ) # view global structure p <- ggnetworkmap(world, twitter_spambots) p_(p) # domestic distribution p <- ggnetworkmap(net = twitter_spambots) p_(p) # topology p <- ggnetworkmap(net = twitter_spambots, arrow.size = 0.5) p_(p) # compute indegree and outdegree centrality twitter_spambots \%v\% "indegree" <- sna::degree(twitter_spambots, cmode = "indegree") twitter_spambots \%v\% "outdegree" <- sna::degree(twitter_spambots, cmode = "outdegree") p <- ggnetworkmap( net = twitter_spambots, arrow.size = 0.5, node.group = indegree, ring.group = outdegree, size = 4 ) + scale_fill_continuous("Indegree", high = "red", low = "yellow") + labs(color = "Outdegree") p_(p) # show some vertex attributes associated with each account p <- ggnetworkmap( net = twitter_spambots, arrow.size = 0.5, node.group = followers, ring.group = friends, size = 4, weight = indegree, label.nodes = TRUE, vjust = -1.5 ) + scale_fill_continuous("Followers", high = "red", low = "yellow") + labs(color = "Friends") + scale_color_continuous(low = "lightgreen", high = "darkgreen") p_(p) } } \author{ Amos Elberg. Original by Moritz Marbach, Francois Briatte } GGally/man/ggally_ratio.Rd0000644000176200001440000000233714527265752015174 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{ggally_ratio} \alias{ggally_ratio} \title{Mosaic plot} \usage{ ggally_ratio( data, mapping = ggplot2::aes(!!!stats::setNames(lapply(colnames(data)[1:2], as.name), c("x", "y"))), ..., floor = 0, ceiling = NULL ) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used. Only x and y will used and both are required} \item{...}{passed to \code{\link[ggplot2]{geom_tile}(...)}} \item{floor}{don't display cells smaller than this value} \item{ceiling}{max value to scale frequencies. If any frequency is larger than the ceiling, the fill color is displayed darker than other rectangles} } \description{ Plots the mosaic plot by using fluctuation. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) p_(ggally_ratio(tips, ggplot2::aes(sex, day))) p_(ggally_ratio(tips, ggplot2::aes(sex, day)) + ggplot2::coord_equal()) # only plot tiles greater or equal to 20 and scale to a max of 50 p_(ggally_ratio( tips, ggplot2::aes(sex, day), floor = 20, ceiling = 50 ) + ggplot2::theme(aspect.ratio = 4 / 2)) } \author{ Barret Schloerke } \keyword{hplot} GGally/man/get_x_axis_labels.Rd0000644000176200001440000000055513663637143016170 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{get_x_axis_labels} \alias{get_x_axis_labels} \title{Get x axis labels} \usage{ get_x_axis_labels(p, xRange) } \arguments{ \item{p}{plot object} \item{xRange}{range of x values} } \description{ Retrieves x axis labels from the plot object directly. } \keyword{internal} GGally/man/putPlot.Rd0000644000176200001440000000260514527265752014164 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggpairs_getput.R \name{putPlot} \alias{putPlot} \alias{[<-.ggmatrix} \title{Insert a plot into a \code{\link{ggmatrix}} object} \usage{ putPlot(pm, value, i, j) \method{[}{ggmatrix}(pm, i, j, ...) <- value } \arguments{ \item{pm}{ggally object to be altered} \item{value}{ggplot object to be placed} \item{i}{row from the top} \item{j}{column from the left} \item{...}{ignored} } \description{ Function to place your own plot in the layout. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive custom_car <- ggpairs(mtcars[, c("mpg", "wt", "cyl")], upper = "blank", title = "Custom Example") # ggplot example taken from example(geom_text) plot <- ggplot2::ggplot(mtcars, ggplot2::aes(x = wt, y = mpg, label = rownames(mtcars))) plot <- plot + ggplot2::geom_text(ggplot2::aes(colour = factor(cyl)), size = 3) + ggplot2::scale_colour_discrete(l = 40) custom_car[1, 2] <- plot personal_plot <- ggally_text( "ggpairs allows you\nto put in your\nown plot.\nLike that one.\n <---" ) custom_car[1, 3] <- personal_plot # custom_car # remove plots after creating a plot matrix custom_car[2, 1] <- NULL custom_car[3, 1] <- "blank" # the same as storing null custom_car[3, 2] <- NULL p_(custom_car) } \seealso{ \code{\link{getPlot}} } \author{ Barret Schloerke } \keyword{hplot} GGally/man/ggcorr.Rd0000644000176200001440000001347415047655270014002 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggcorr.R \name{ggcorr} \alias{ggcorr} \title{Correlation matrix} \usage{ ggcorr( data, method = c("pairwise", "pearson"), cor_matrix = NULL, nbreaks = NULL, digits = 2, name = "", low = "#3B9AB2", mid = "#EEEEEE", high = "#F21A00", midpoint = 0, palette = NULL, geom = "tile", min_size = 2, max_size = 6, label = FALSE, label_alpha = FALSE, label_color = "black", label_round = 1, label_size = 4, limits = c(-1, 1), drop = is.null(limits) || identical(limits, FALSE), layout.exp = 0, legend.position = "right", legend.size = 9, ... ) } \arguments{ \item{data}{a data frame or matrix containing numeric (continuous) data. If any of the columns contain non-numeric data, they will be dropped with a warning.} \item{method}{a vector of two character strings. The first value gives the method for computing covariances in the presence of missing values, and must be (an abbreviation of) one of \code{"everything"}, \code{"all.obs"}, \code{"complete.obs"}, \code{"na.or.complete"} or \code{"pairwise.complete.obs"}. The second value gives the type of correlation coefficient to compute, and must be one of \code{"pearson"}, \code{"kendall"} or \code{"spearman"}. See \code{\link[stats]{cor}} for details. Defaults to \code{c("pairwise", "pearson")}.} \item{cor_matrix}{the named correlation matrix to use for calculations. Defaults to the correlation matrix of \code{data} when \code{data} is supplied.} \item{nbreaks}{the number of breaks to apply to the correlation coefficients, which results in a categorical color scale. See 'Note'. Defaults to \code{NULL} (no breaks, continuous scaling).} \item{digits}{the number of digits to show in the breaks of the correlation coefficients: see \code{\link[base]{cut}} for details. Defaults to \code{2}.} \item{name}{a character string for the legend that shows the colors of the correlation coefficients. Defaults to \code{""} (no legend name).} \item{low}{the lower color of the gradient for continuous scaling of the correlation coefficients. Defaults to \code{"#3B9AB2"} (blue).} \item{mid}{the midpoint color of the gradient for continuous scaling of the correlation coefficients. Defaults to \code{"#EEEEEE"} (very light grey).} \item{high}{the upper color of the gradient for continuous scaling of the correlation coefficients. Defaults to \code{"#F21A00"} (red).} \item{midpoint}{the midpoint value for continuous scaling of the correlation coefficients. Defaults to \code{0}.} \item{palette}{if \code{nbreaks} is used, a ColorBrewer palette to use instead of the colors specified by \code{low}, \code{mid} and \code{high}. Defaults to \code{NULL}.} \item{geom}{the geom object to use. Accepts either \code{"tile"}, \code{"circle"}, \code{"text"} or \code{"blank"}.} \item{min_size}{when \code{geom} has been set to \code{"circle"}, the minimum size of the circles. Defaults to \code{2}.} \item{max_size}{when \code{geom} has been set to \code{"circle"}, the maximum size of the circles. Defaults to \code{6}.} \item{label}{whether to add correlation coefficients to the plot. Defaults to \code{FALSE}.} \item{label_alpha}{whether to make the correlation coefficients increasingly transparent as they come close to 0. Also accepts any numeric value between \code{0} and \code{1}, in which case the level of transparency is set to that fixed value. Defaults to \code{FALSE} (no transparency).} \item{label_color}{the color of the correlation coefficients. Defaults to \code{"grey75"}.} \item{label_round}{the decimal rounding of the correlation coefficients. Defaults to \code{1}.} \item{label_size}{the size of the correlation coefficients. Defaults to \code{4}.} \item{limits}{bounding of color scaling for correlations, set \code{limits = NULL} or \code{FALSE} to remove} \item{drop}{if using \code{nbreaks}, whether to drop unused breaks from the color scale. Defaults to \code{FALSE} (recommended).} \item{layout.exp}{a multiplier to expand the horizontal axis to the left if variable names get clipped. Defaults to \code{0} (no expansion).} \item{legend.position}{where to put the legend of the correlation coefficients: see \code{\link[ggplot2]{theme}} for details. Defaults to \code{"bottom"}.} \item{legend.size}{the size of the legend title and labels, in points: see \code{\link[ggplot2]{theme}} for details. Defaults to \code{9}.} \item{...}{other arguments supplied to \code{\link[ggplot2]{geom_text}} for the diagonal labels.} } \description{ Function for making a correlation matrix plot, using \pkg{ggplot2}. The function is directly inspired by Tian Zheng and Yu-Sung Su's \code{corrplot} function in the 'arm' package. Please visit \url{https://github.com/briatte/ggcorr} for the latest version of \code{ggcorr}, and see the vignette at \url{https://briatte.github.io/ggcorr/} for many examples of how to use it. } \note{ Recommended values for the \code{nbreaks} argument are \code{3} to \code{11}, as values above 11 are visually difficult to separate and are not supported by diverging ColorBrewer palettes. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive # Default output. p_(ggcorr(nba_ppg_2008[, -1])) # Labeled output, with coefficient transparency. p_(ggcorr(nba_ppg_2008[, -1], label = TRUE, label_alpha = TRUE )) # Custom options. p_(ggcorr( nba_ppg_2008[, -1], name = expression(rho), geom = "circle", max_size = 10, min_size = 2, size = 3, hjust = 0.75, nbreaks = 6, angle = -45, palette = "PuOr" # colorblind safe, photocopy-able )) # Supply your own correlation matrix p_(ggcorr( data = NULL, cor_matrix = cor(nba_ppg_2008[, -1], use = "pairwise") )) } \seealso{ \code{\link[stats]{cor}} and \code{corrplot} in the \code{arm} package. } \author{ Francois Briatte, with contributions from Amos B. Elberg and Barret Schloerke } GGally/man/ggally_smooth.Rd0000644000176200001440000000234514527265752015366 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{ggally_smooth} \alias{ggally_smooth} \alias{ggally_smooth_loess} \alias{ggally_smooth_lm} \title{Scatter plot with a smoothed line} \usage{ ggally_smooth( data, mapping, ..., method = "lm", formula = y ~ x, se = TRUE, shrink = TRUE ) ggally_smooth_loess(data, mapping, ...) ggally_smooth_lm(data, mapping, ...) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used} \item{method, se}{parameters supplied to \code{\link[ggplot2]{geom_smooth}}} \item{formula, ...}{other arguments to add to geom_smooth} \item{shrink}{boolean to determine if y range is reduced to range of points or points and error ribbon} } \description{ Add a smoothed condition mean with a given scatter plot. } \details{ Y limits are reduced to match original Y range with the goal of keeping the Y axis the same across plots. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) p_(ggally_smooth(tips, mapping = ggplot2::aes(x = total_bill, y = tip))) p_(ggally_smooth(tips, mapping = ggplot2::aes(total_bill, tip, color = sex))) } \author{ Barret Schloerke } \keyword{hplot} GGally/man/ggsurv.Rd0000644000176200001440000000731715022360455014022 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggsurv.R \name{ggsurv} \alias{ggsurv} \title{Survival curves} \usage{ ggsurv( s, CI = "def", plot.cens = TRUE, surv.col = "gg.def", cens.col = "gg.def", lty.est = 1, lty.ci = 2, size.est = 0.5, size.ci = size.est, cens.size = 2, cens.shape = 3, back.white = FALSE, xlab = "Time", ylab = "Survival", main = "", order.legend = TRUE ) } \arguments{ \item{s}{an object of class \code{survfit}} \item{CI}{should a confidence interval be plotted? Defaults to \code{TRUE} for single stratum objects and \code{FALSE} for multiple strata objects.} \item{plot.cens}{mark the censored observations?} \item{surv.col}{colour of the survival estimate. Defaults to black for one stratum, and to the default \pkg{ggplot2} colours for multiple strata. Length of vector with colour names should be either 1 or equal to the number of strata.} \item{cens.col}{colour of the points that mark censored observations.} \item{lty.est}{linetype of the survival curve(s). Vector length should be either 1 or equal to the number of strata.} \item{lty.ci}{linetype of the bounds that mark the 95\% CI.} \item{size.est}{line width of the survival curve} \item{size.ci}{line width of the 95\% CI} \item{cens.size}{point size of the censoring points} \item{cens.shape}{shape of the points that mark censored observations.} \item{back.white}{if TRUE the background will not be the default grey of \code{ggplot2} but will be white with borders around the plot.} \item{xlab}{the label of the x-axis.} \item{ylab}{the label of the y-axis.} \item{main}{the plot label.} \item{order.legend}{boolean to determine if the legend display should be ordered by final survival time} } \value{ An object of class \code{ggplot} } \description{ This function produces Kaplan-Meier plots using \pkg{ggplot2}. As a first argument it needs a \code{survfit} object, created by the \code{survival} package. Default settings differ for single stratum and multiple strata objects. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive if (require(survival) && require(scales)) { lung <- survival::lung sf.lung <- survival::survfit(Surv(time, status) ~ 1, data = lung) p_(ggsurv(sf.lung)) # Multiple strata examples sf.sex <- survival::survfit(Surv(time, status) ~ sex, data = lung) pl.sex <- ggsurv(sf.sex) p_(pl.sex) # Adjusting the legend of the ggsurv fit p_(pl.sex + ggplot2::guides(linetype = "none") + ggplot2::scale_colour_discrete( name = "Sex", breaks = c(1, 2), labels = c("Male", "Female") )) # Multiple factors lung2 <- dplyr::mutate(lung, older = as.factor(age > 60)) sf.sex2 <- survival::survfit(Surv(time, status) ~ sex + older, data = lung2) pl.sex2 <- ggsurv(sf.sex2) p_(pl.sex2) # Change legend title p_(pl.sex2 + labs(color = "New Title", linetype = "New Title")) # We can still adjust the plot after fitting kidney <- survival::kidney sf.kid <- survival::survfit(Surv(time, status) ~ disease, data = kidney) pl.kid <- ggsurv(sf.kid, plot.cens = FALSE) p_(pl.kid) # Zoom in to first 80 days p_(pl.kid + ggplot2::coord_cartesian(xlim = c(0, 80), ylim = c(0.45, 1))) # Add the diseases names to the plot and remove legend p_(pl.kid + ggplot2::annotate( "text", label = c("PKD", "Other", "GN", "AN"), x = c(90, 125, 5, 60), y = c(0.8, 0.65, 0.55, 0.30), size = 5, colour = scales::pal_hue( h = c(0, 360) + 15, c = 100, l = 65, h.start = 0, direction = 1 )(4) ) + ggplot2::guides(color = "none", linetype = "none")) } } \author{ Edwin Thoen } GGally/man/ggally_barDiag.Rd0000644000176200001440000000151114526730006015364 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{ggally_barDiag} \alias{ggally_barDiag} \title{Bar plot} \usage{ ggally_barDiag(data, mapping, ..., rescale = FALSE) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used} \item{...}{other arguments are sent to geom_bar} \item{rescale}{boolean to decide whether or not to rescale the count output. Only applies to numeric data} } \description{ Displays a bar plot for the diagonal of a \code{\link{ggpairs}} plot matrix. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) p_(ggally_barDiag(tips, mapping = ggplot2::aes(x = day))) p_(ggally_barDiag(tips, mapping = ggplot2::aes(x = tip), binwidth = 0.25)) } \author{ Barret Schloerke } \keyword{hplot} GGally/man/ggally_facetdensity.Rd0000644000176200001440000000141614527265752016535 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{ggally_facetdensity} \alias{ggally_facetdensity} \title{Faceted density plot} \usage{ ggally_facetdensity(data, mapping, ...) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used} \item{...}{other arguments being sent to stat_density} } \description{ Make density plots by displaying subsets of the data in different panels. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) p_(ggally_facetdensity(tips, mapping = ggplot2::aes(x = total_bill, y = sex))) p_(ggally_facetdensity( tips, mapping = ggplot2::aes(sex, total_bill, color = sex) )) } \author{ Barret Schloerke } \keyword{hplot} GGally/man/ggally_na.Rd0000644000176200001440000000116713665760216014451 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{ggally_na} \alias{ggally_na} \alias{ggally_naDiag} \title{NA plot} \usage{ ggally_na(data = NULL, mapping = NULL, size = 10, color = "grey20", ...) ggally_naDiag(...) } \arguments{ \item{data}{ignored} \item{mapping}{ignored} \item{size}{size of the geom_text 'NA'} \item{color}{color of the geom_text 'NA'} \item{...}{other arguments sent to geom_text} } \description{ Draws a large \code{NA} in the middle of the plotting area. This plot is useful when all X or Y data is \code{NA} } \author{ Barret Schloerke } \keyword{hplot} GGally/man/baseball.Rd0000644000176200001440000000254314527265752014263 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/data-baseball.R \docType{data} \name{baseball} \alias{baseball} \title{Yearly batting records for all major league baseball players} \format{ A 21699 x 22 data frame } \usage{ baseball } \description{ This data frame contains batting statistics for a subset of players collected from \url{http://www.baseball-databank.org/}. There are a total of 21,699 records, covering 1,228 players from 1871 to 2007. Only players with more 15 seasons of play are included. } \section{Variables}{ Variables: \itemize{ \item id, unique player id \item year, year of data \item stint \item team, team played for \item lg, league \item g, number of games \item ab, number of times at bat \item r, number of runs \item h, hits, times reached base because of a batted, fair ball without error by the defense \item X2b, hits on which the batter reached second base safely \item X3b, hits on which the batter reached third base safely \item hr, number of home runs \item rbi, runs batted in \item sb, stolen bases \item cs, caught stealing \item bb, base on balls (walk) \item so, strike outs \item ibb, intentional base on balls \item hbp, hits by pitch \item sh, sacrifice hits \item sf, sacrifice flies \item gidp, ground into double play } } \references{ \url{http://www.baseball-databank.org/} } \keyword{datasets} GGally/man/is_blank_plot.Rd0000644000176200001440000000067314527265752015340 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggmatrix_print.R \name{is_blank_plot} \alias{is_blank_plot} \title{Is Blank Plot? Find out if the plot equals a blank plot} \usage{ is_blank_plot(p) } \description{ Is Blank Plot? Find out if the plot equals a blank plot } \examples{ GGally:::is_blank_plot(ggally_blank()) GGally:::is_blank_plot(ggally_points(mtcars, ggplot2::aes(disp, hp))) } \keyword{internal} GGally/man/ggally_facetbar.Rd0000644000176200001440000000135214526730006015605 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{ggally_facetbar} \alias{ggally_facetbar} \title{Faceted bar plot} \usage{ ggally_facetbar(data, mapping, ...) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used} \item{...}{other arguments are sent to geom_bar} } \description{ X variables are plotted using \code{geom_bar} and are faceted by the Y variable. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) p_(ggally_facetbar(tips, ggplot2::aes(x = sex, y = smoker, fill = time))) p_(ggally_facetbar(tips, ggplot2::aes(x = smoker, y = sex, fill = time))) } \author{ Barret Schloerke } \keyword{hplot} GGally/man/ggally_statistic.Rd0000644000176200001440000000413713665760216016062 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{ggally_statistic} \alias{ggally_statistic} \title{Generalized text display} \usage{ ggally_statistic( data, mapping, text_fn, title, na.rm = NA, display_grid = FALSE, justify_labels = "right", justify_text = "left", sep = ": ", family = "mono", title_args = list(), group_args = list(), align_percent = 0.5, title_hjust = 0.5, group_hjust = 0.5 ) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used} \item{text_fn}{function that takes in \code{x} and \code{y} and returns a text string} \item{title}{title text to be displayed} \item{na.rm}{logical value which determines if \code{NA} values are removed. If \code{TRUE}, no warning message will be displayed.} \item{display_grid}{if \code{TRUE}, display aligned panel grid lines. If \code{FALSE} (default), display a thin panel border.} \item{justify_labels}{\code{justify} argument supplied when \code{\link[base]{format}}ting the labels} \item{justify_text}{\code{justify} argument supplied when \code{\link[base]{format}}ting the returned \code{text_fn(x, y)} values} \item{sep}{separation value to be placed between the labels and text} \item{family}{font family used when displaying all text. This value will be set in \code{title_args} or \code{group_args} if no \code{family} value exists. By using \code{"mono"}, groups will align with each other.} \item{title_args}{arguments being supplied to the title's \code{\link[ggplot2]{geom_text}()}} \item{group_args}{arguments being supplied to the split-by-color group's \code{\link[ggplot2]{geom_text}()}} \item{align_percent}{relative align position of the text. When \code{title_hjust = 0.5} and \code{group_hjust = 0.5}, this should not be needed to be set.} \item{title_hjust, group_hjust}{\code{hjust} sent to \code{\link[ggplot2]{geom_text}()} for the title and group values respectively. Any \code{hjust} value supplied in \code{title_args} or \code{group_args} will take precedence.} } \description{ Generalized text display } \seealso{ \code{\link{ggally_cor}} } GGally/man/ggally_cross.Rd0000644000176200001440000000431314526730006015167 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggally_cross.R \name{ggally_cross} \alias{ggally_cross} \title{Plots the number of observations} \usage{ ggally_cross(data, mapping, ..., scale_max_size = 20, geom_text_args = NULL) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used} \item{...}{other arguments passed to \code{\link[ggplot2:geom_point]{ggplot2::geom_point()}}} \item{scale_max_size}{\code{max_size} argument supplied to \code{\link[ggplot2:scale_size]{ggplot2::scale_size_area()}}} \item{geom_text_args}{other arguments passed to \code{\link[ggplot2:geom_text]{ggplot2::geom_text()}}} } \description{ Plot the number of observations by using square points with proportional areas. Could be filled according to chi-squared statistics computed by \code{\link[=stat_cross]{stat_cross()}}. Labels could also be added (see examples). } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) p_(ggally_cross(tips, mapping = aes(x = smoker, y = sex))) p_(ggally_cross(tips, mapping = aes(x = day, y = time))) # Custom max size p_(ggally_cross(tips, mapping = aes(x = smoker, y = sex)) + scale_size_area(max_size = 40)) # Custom fill p_(ggally_cross(tips, mapping = aes(x = smoker, y = sex), fill = "red")) # Custom shape p_(ggally_cross(tips, mapping = aes(x = smoker, y = sex), shape = 21)) # Fill squares according to standardized residuals d <- as.data.frame(Titanic) p_(ggally_cross( d, mapping = aes(x = Class, y = Survived, weight = Freq, fill = after_stat(std.resid)) ) + scale_fill_steps2(breaks = c(-3, -2, 2, 3), show.limits = TRUE)) # Add labels p_(ggally_cross( tips, mapping = aes( x = smoker, y = sex, colour = smoker, label = scales::percent(after_stat(prop)) ) )) # Customize labels' appearance and same size for all squares p_(ggally_cross( tips, mapping = aes( x = smoker, y = sex, size = NULL, # do not map size to a variable label = scales::percent(after_stat(prop)) ), size = 40, # fix value for points size fill = "darkblue", geom_text_args = list(colour = "white", fontface = "bold", size = 6) )) } \author{ Joseph Larmarange } \keyword{hplot} GGally/man/ggnostic.Rd0000644000176200001440000001307315022037246014315 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggnostic.R \name{ggnostic} \alias{ggnostic} \title{Plot matrix of statistical model diagnostics} \usage{ ggnostic( model, ..., columnsX = attr(data, "var_x"), columnsY = c(".resid", ".sigma", ".hat", ".cooksd"), columnLabelsX = attr(data, "var_x_label"), columnLabelsY = gsub("\\\\.", " ", gsub("^\\\\.", "", columnsY)), xlab = "explanatory variables", ylab = "diagnostics", title = paste(deparse(model$call, width.cutoff = 500L), collapse = "\\n"), continuous = list(default = ggally_points, .fitted = ggally_points, .se.fit = ggally_nostic_se_fit, .resid = ggally_nostic_resid, .hat = ggally_nostic_hat, .sigma = ggally_nostic_sigma, .cooksd = ggally_nostic_cooksd, .std.resid = ggally_nostic_std_resid), combo = list(default = ggally_box_no_facet, .fitted = ggally_box_no_facet, .se.fit = ggally_nostic_se_fit, .resid = ggally_nostic_resid, .hat = ggally_nostic_hat, .sigma = ggally_nostic_sigma, .cooksd = ggally_nostic_cooksd, .std.resid = ggally_nostic_std_resid), discrete = list(default = ggally_ratio, .fitted = ggally_ratio, .se.fit = ggally_ratio, .resid = ggally_ratio, .hat = ggally_ratio, .sigma = ggally_ratio, .cooksd = ggally_ratio, .std.resid = ggally_ratio), progress = NULL, data = broomify(model) ) } \arguments{ \item{model}{statistical model object such as output from \code{stats::\link[stats]{lm}} or \code{stats::\link[stats]{glm}}} \item{...}{arguments passed directly to \code{\link{ggduo}}} \item{columnsX}{columns to be displayed in the plot matrix. Defaults to the predictor columns of the \code{model}} \item{columnsY}{rows to be displayed in the plot matrix. Defaults to residuals, leave one out sigma value, diagonal of the hat matrix, and Cook's Distance. The possible values are the response variables in the model and the added columns provided by \code{\link[broom:reexports]{broom::augment()}}. See details for more information.} \item{columnLabelsX, columnLabelsY}{column and row labels to display in the plot matrix} \item{xlab, ylab, title}{plot matrix labels passed directly to \code{\link{ggmatrix}}} \item{continuous, combo, discrete}{list of functions for each y variable. See details for more information.} \item{progress}{\code{NULL} (default) for a progress bar in interactive sessions with more than 15 plots, \code{TRUE} for a progress bar, \code{FALSE} for no progress bar, or a function that accepts at least a plot matrix and returns a new \code{progress::\link[progress]{progress_bar}}. See \code{\link{ggmatrix_progress}}.} \item{data}{data defaults to a 'broomify'ed model object. This object will contain information about the X variables, Y variables, and multiple broom outputs. See \code{\link{broomify}(model)} for more information} } \description{ Plot matrix of statistical model diagnostics } \section{\code{columnsY}}{ \code{\link[broom:reexports]{broom::augment()}} collects data from the supplied model and returns a data.frame with the following columns (taken directly from broom documentation). These columns are the only allowed values in the \code{columnsY} parameter to \code{\link{ggnostic}}. \describe{ \item{.resid}{Residuals} \item{.hat}{Diagonal of the hat matrix} \item{.sigma}{Estimate of residual standard deviation when corresponding observation is dropped from model} \item{.cooksd}{Cooks distance, \code{\link[stats:influence.measures]{stats::cooks.distance()}}} \item{.fitted}{Fitted values of model} \item{.se.fit}{Standard errors of fitted values} \item{.std.resid}{Standardized residuals} \item{response variable name}{The response variable in the model may be added. Such as \code{"mpg"} in the model \code{lm(mpg ~ ., data = mtcars)}} } } \section{\code{continuous}, \code{combo}, \code{discrete} types}{ Similar to \code{\link{ggduo}} and \code{\link{ggpairs}}, functions may be supplied to display the different column types. However, since the Y rows are fixed, each row has it's own corresponding function in each of the plot types: continuous, combo, and discrete. Each plot type list can have keys that correspond to the \code{\link[broom:reexports]{broom::augment()}} output: \code{".fitted"}, \code{".resid"}, \code{".std.resid"}, \code{".sigma"}, \code{".se.fit"}, \code{".hat"}, \code{".cooksd"}. An extra key, \code{"default"}, is used to plot the response variables of the model if they are included. Having a function for each diagnostic allows for very fine control over the diagnostics plot matrix. The functions for each type list are wrapped into a switch function that calls the function corresponding to the y variable being plotted. These switch functions are then passed directly to the \code{types} parameter in \code{\link{ggduo}}. } \examples{ # small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(mtcars) # use mtcars dataset and alter the 'am' column to display actual name values mtc <- mtcars mtc$am <- c("0" = "automatic", "1" = "manual")[as.character(mtc$am)] # step the complete model down to a smaller model mod <- stats::step(stats::lm(mpg ~ ., data = mtc), trace = FALSE) # display using defaults pm <- ggnostic(mod) p_(pm) # color by am value pm <- ggnostic(mod, mapping = ggplot2::aes(color = am)) p_(pm) # turn resid smooth error ribbon off pm <- ggnostic(mod, continuous = list(.resid = wrap("nostic_resid", se = FALSE))) p_(pm) ## plot residuals vs fitted in a ggpairs plot matrix dt <- broomify(mod) pm <- ggpairs( dt, c(".fitted", ".resid"), columnLabels = c("fitted", "residuals"), lower = list(continuous = ggally_nostic_resid) ) p_(pm) } GGally/man/ggally_blank.Rd0000644000176200001440000000075413764714663015150 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{ggally_blank} \alias{ggally_blank} \alias{ggally_blankDiag} \title{Blank plot} \usage{ ggally_blank(...) ggally_blankDiag(...) } \arguments{ \item{...}{other arguments ignored} } \description{ Draws nothing. } \details{ Makes a "blank" ggplot object that will only draw white space } \seealso{ \code{\link[ggplot2:element]{ggplot2::element_blank()}} } \author{ Barret Schloerke } \keyword{hplot} GGally/man/ggally_autopoint.Rd0000644000176200001440000000263414526730006016064 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{ggally_autopoint} \alias{ggally_autopoint} \alias{ggally_autopointDiag} \title{Scatterplot for continuous and categorical variables} \usage{ ggally_autopoint(data, mapping, ...) ggally_autopointDiag(data, mapping, ...) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used} \item{...}{other arguments passed to \code{\link[ggforce]{geom_autopoint}(...)}} } \description{ Make scatterplots compatible with both continuous and categorical variables using \code{\link[ggforce]{geom_autopoint}} from package \pkg{ggforce}. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) p_(ggally_autopoint(tips, mapping = aes(x = tip, y = total_bill))) p_(ggally_autopoint(tips, mapping = aes(x = tip, y = sex))) p_(ggally_autopoint(tips, mapping = aes(x = smoker, y = sex))) p_(ggally_autopoint(tips, mapping = aes(x = smoker, y = sex, color = day))) p_(ggally_autopoint(tips, mapping = aes(x = smoker, y = sex), size = 8)) p_(ggally_autopoint(tips, mapping = aes(x = smoker, y = sex), alpha = .9)) p_(ggpairs( tips, mapping = aes(colour = sex), upper = list(discrete = "autopoint", combo = "autopoint", continuous = "autopoint"), diag = list(discrete = "autopointDiag", continuous = "autopointDiag") )) } \author{ Joseph Larmarange } \keyword{hplot} GGally/man/skewness.Rd0000644000176200001440000000055113665760216014352 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggparcoord.R \name{skewness} \alias{skewness} \title{Sample skewness} \usage{ skewness(x) } \arguments{ \item{x}{numeric vector} } \value{ sample skewness of \code{x} } \description{ Calculate the sample skewness of a vector while ignoring missing values. } \author{ Jason Crowley } GGally/man/print.ggmatrix.Rd0000644000176200001440000000124015027521001015436 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggmatrix_print.R \name{print.ggmatrix} \alias{print.ggmatrix} \title{Print \code{\link{ggmatrix}} object} \arguments{ \item{x}{plot to display} \item{newpage}{draw new (empty) page first?} \item{vp}{viewport to draw plot in} \item{...}{arguments passed onto \code{\link{ggmatrix_gtable}}} } \description{ Print method taken from \code{ggplot2:::print.ggplot} and altered for a \code{\link{ggmatrix}} object } \examples{ data(tips) pMat <- ggpairs(tips, c(1, 3, 2), mapping = ggplot2::aes(color = sex)) pMat # calls print(pMat), which calls print.ggmatrix(pMat) } \author{ Barret Schloerke } GGally/man/ggally_cor.Rd0000644000176200001440000000643115022362712014621 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{ggally_cor} \alias{ggally_cor} \title{Correlation value plot} \usage{ ggally_cor( data, mapping, ..., stars = TRUE, method = "pearson", display_grid = FALSE, digits = 3, title_args = list(...), group_args = list(...), justify_labels = "right", align_percent = 0.5, title = "Corr", na.rm = NA, use = deprecated(), alignPercent = deprecated(), displayGrid = deprecated() ) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used} \item{...}{other arguments being supplied to \code{\link[ggplot2]{geom_text}()} for the title and groups} \item{stars}{logical value which determines if the significance stars should be displayed. Given the \code{\link[stats]{cor.test}} p-values, display \describe{ \item{\code{"***"}}{if the p-value is \verb{< 0.001}} \item{\code{"**"}}{if the p-value is \verb{< 0.01}} \item{\code{"*"}}{if the p-value is \verb{< 0.05}} \item{\code{"."}}{if the p-value is \verb{< 0.10}} \item{\code{""}}{otherwise} }} \item{method}{\code{method} supplied to cor function} \item{display_grid}{if \code{TRUE}, display aligned panel grid lines. If \code{FALSE} (default), display a thin panel border.} \item{digits}{number of digits to be displayed after the decimal point. See \code{\link[base]{formatC}} for how numbers are calculated.} \item{title_args}{arguments being supplied to the title's \code{\link[ggplot2]{geom_text}()}} \item{group_args}{arguments being supplied to the split-by-color group's \code{\link[ggplot2]{geom_text}()}} \item{justify_labels}{\code{justify} argument supplied when \code{\link[base]{format}}ting the labels} \item{align_percent}{relative align position of the text. When \code{justify_labels = 0.5}, this should not be needed to be set.} \item{title}{title text to be displayed} \item{na.rm}{logical value which determines if \code{NA} values are removed. If \code{TRUE}, no warning message will be displayed.} \item{use}{\ifelse{html}{\href{https://lifecycle.r-lib.org/articles/stages.html#deprecated}{\figure{lifecycle-deprecated.svg}{options: alt='[Deprecated]'}}}{\strong{[Deprecated]}}. This variable is not used internally. Please remove it from your code.} \item{alignPercent, displayGrid}{\ifelse{html}{\href{https://lifecycle.r-lib.org/articles/stages.html#deprecated}{\figure{lifecycle-deprecated.svg}{options: alt='[Deprecated]'}}}{\strong{[Deprecated]}}. Please use their snake-case counterparts.} } \description{ Estimate correlation from the given data. If a color variable is supplied, the correlation will also be calculated per group. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) p_(ggally_cor(tips, mapping = ggplot2::aes(total_bill, tip))) # display with grid p_(ggally_cor( tips, mapping = ggplot2::aes(total_bill, tip), display_grid = TRUE )) # change text attributes p_(ggally_cor( tips, mapping = ggplot2::aes(x = total_bill, y = tip), size = 15, colour = I("red"), title = "Correlation" )) # split by a variable p_(ggally_cor( tips, mapping = ggplot2::aes(total_bill, tip, color = sex), size = 5 )) } \seealso{ \code{\link{ggally_statistic}}, \code{\link{ggally_cor_v1_5}} } \author{ Barret Schloerke } \keyword{hplot} GGally/man/ggally_densityDiag.Rd0000644000176200001440000000153514526730006016305 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{ggally_densityDiag} \alias{ggally_densityDiag} \title{Univariate density plot} \usage{ ggally_densityDiag(data, mapping, ..., rescale = FALSE) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used.} \item{...}{other arguments sent to stat_density} \item{rescale}{boolean to decide whether or not to rescale the count output} } \description{ Displays a density plot for the diagonal of a \code{\link{ggpairs}} plot matrix. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) p_(ggally_densityDiag(tips, mapping = ggplot2::aes(x = total_bill))) p_(ggally_densityDiag(tips, mapping = ggplot2::aes(x = total_bill, color = day))) } \author{ Barret Schloerke } \keyword{hplot} GGally/man/brew_colors.Rd0000644000176200001440000000046413663637143015033 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggnostic.R \name{brew_colors} \alias{brew_colors} \title{RColorBrewer Set1 colors} \usage{ brew_colors(col) } \arguments{ \item{col}{standard color name used to retrieve hex color value} } \description{ RColorBrewer Set1 colors } GGally/man/grab_legend.Rd0000644000176200001440000000211514527265752014742 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggmatrix_legend.R \name{grab_legend} \alias{grab_legend} \alias{print.legend_guide_box} \title{Grab the legend and print it as a plot} \usage{ grab_legend(p) \method{print}{legend_guide_box}(x, ..., plotNew = FALSE) } \arguments{ \item{p}{ggplot2 plot object} \item{x}{legend object that has been grabbed from a ggplot2 object} \item{...}{ignored} \item{plotNew}{boolean to determine if the \code{grid.newpage()} command and a new blank rectangle should be printed} } \description{ Grab the legend and print it as a plot } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive library(ggplot2) histPlot <- ggplot(iris, aes(Sepal.Length, fill = Species)) + geom_histogram(binwidth = 1 / 4) (right <- histPlot) (bottom <- histPlot + theme(legend.position = "bottom")) (top <- histPlot + theme(legend.position = "top")) (left <- histPlot + theme(legend.position = "left")) p_(grab_legend(right)) p_(grab_legend(bottom)) p_(grab_legend(top)) p_(grab_legend(left)) } GGally/man/ggmatrix_location.Rd0000644000176200001440000000461314526730006016214 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggpairs_add.R \name{ggmatrix_location} \alias{ggmatrix_location} \title{\code{\link{ggmatrix}} plot locations} \usage{ ggmatrix_location(pm, location = NULL, rows = NULL, cols = NULL) } \arguments{ \item{pm}{\code{\link{ggmatrix}} plot object} \item{location}{\describe{ \item{\code{"all"}, \code{TRUE}}{All row and col combinations} \item{\code{"none"}}{No row and column combinations} \item{\code{"upper"}}{Locations where the column value is higher than the row value} \item{\code{"lower"}}{Locations where the row value is higher than the column value} \item{\code{"diag"}}{Locations where the column value is equal to the row value} \item{\code{matrix} or \code{data.frame}}{ \code{matrix} values will be converted into \code{data.frame}s. \itemize{ \item A \code{data.frame} with the exact column names \code{c("row", "col")} \item A \code{data.frame} with the number of rows and columns matching the plot matrix object provided. Each cell will be tested for a "truthy" value to determine if the location should be kept. } } }} \item{rows}{numeric vector of the rows to be used. Will be used with \code{cols} if \code{location} is \code{NULL}} \item{cols}{numeric vector of the cols to be used. Will be used with \code{rows} if \code{location} is \code{NULL}} } \value{ Data frame with columns \code{c("row", "col")} containing locations for the plot matrix } \description{ \lifecycle{experimental} } \details{ Convert many types of location values to a consistent \code{data.frame} of \code{row} and \code{col} values. } \examples{ pm <- ggpairs(tips, 1:3) # All locations ggmatrix_location(pm, location = "all") ggmatrix_location(pm, location = TRUE) # No locations ggmatrix_location(pm, location = "none") # "upper" triangle locations ggmatrix_location(pm, location = "upper") # "lower" triangle locations ggmatrix_location(pm, location = "lower") # "diag" locations ggmatrix_location(pm, location = "diag") # specific rows ggmatrix_location(pm, rows = 2) # specific columns ggmatrix_location(pm, cols = 2) # row and column combinations ggmatrix_location(pm, rows = c(1, 2), cols = c(1, 3)) # matrix locations mat <- matrix(TRUE, ncol = 3, nrow = 3) mat[1, 1] <- FALSE locs <- ggmatrix_location(pm, location = mat) ## does not contain the 1, 1 cell locs # Use the output of a prior ggmatrix_location ggmatrix_location(pm, location = locs) } GGally/man/gglegend.Rd0000644000176200001440000000316414321332407014252 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggmatrix_legend.R \name{gglegend} \alias{gglegend} \title{Plot only legend of plot function} \usage{ gglegend(fn) } \arguments{ \item{fn}{this value is passed directly to an empty \code{\link{wrap}} call. Please see \code{?\link{wrap}} for more details.} } \value{ a function that when called with arguments will produce the legend of the plotting function supplied. } \description{ Plot only legend of plot function } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive # display regular plot p_(ggally_points(iris, ggplot2::aes(Sepal.Length, Sepal.Width, color = Species))) # Make a function that will only print the legend points_legend <- gglegend(ggally_points) p_(points_legend(iris, ggplot2::aes(Sepal.Length, Sepal.Width, color = Species))) # produce the sample legend plot, but supply a string that 'wrap' understands same_points_legend <- gglegend("points") identical( attr(attr(points_legend, "fn"), "original_fn"), attr(attr(same_points_legend, "fn"), "original_fn") ) # Complicated examples custom_legend <- wrap(gglegend("points"), size = 6) p_(custom_legend(iris, ggplot2::aes(Sepal.Length, Sepal.Width, color = Species))) # Use within ggpairs pm <- ggpairs( iris, 1:2, mapping = ggplot2::aes(color = Species), upper = list(continuous = gglegend("points")) ) p_(pm) # Place a legend in a specific location pm <- ggpairs(iris, 1:2, mapping = ggplot2::aes(color = Species)) # Make the legend pm[1, 2] <- points_legend(iris, ggplot2::aes(Sepal.Width, Sepal.Length, color = Species)) p_(pm) } GGally/man/ggfacet.Rd0000644000176200001440000000437014527265752014116 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggfacet.R \name{ggfacet} \alias{ggfacet} \title{Single \pkg{ggplot2} plot matrix with \code{\link[ggplot2]{facet_grid}}} \usage{ ggfacet( data, mapping = NULL, columnsX = 1:ncol(data), columnsY = 1:ncol(data), fn = ggally_points, ..., columnLabelsX = names(data[columnsX]), columnLabelsY = names(data[columnsY]), xlab = NULL, ylab = NULL, title = NULL, scales = "free" ) } \arguments{ \item{data}{data.frame that contains all columns to be displayed. This data will be melted before being passed into the function \code{fn}} \item{mapping}{aesthetic mapping (besides \code{x} and \code{y}). See \code{\link[ggplot2]{aes}()}} \item{columnsX}{columns to be displayed in the plot matrix} \item{columnsY}{rows to be displayed in the plot matrix} \item{fn}{function to be executed. Similar to \code{\link{ggpairs}} and \code{\link{ggduo}}, the function may either be a string identifier or a real function that \code{\link{wrap}} understands.} \item{...}{extra arguments passed directly to \code{fn}} \item{columnLabelsX, columnLabelsY}{column and row labels to display in the plot matrix} \item{xlab, ylab, title}{plot matrix labels} \item{scales}{parameter supplied to \code{ggplot2::\link[ggplot2]{facet_grid}}. Default behavior is \code{"free"}} } \description{ Single \pkg{ggplot2} plot matrix with \code{\link[ggplot2]{facet_grid}} } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive if (requireNamespace("chemometrics", quietly = TRUE)) { data(NIR, package = "chemometrics") NIR_sub <- data.frame(NIR$yGlcEtOH, NIR$xNIR[, 1:3]) str(NIR_sub) x_cols <- c("X1115.0", "X1120.0", "X1125.0") y_cols <- c("Glucose", "Ethanol") # using ggduo directly p <- ggduo(NIR_sub, x_cols, y_cols, types = list(continuous = "points")) p_(p) # using ggfacet p <- ggfacet(NIR_sub, x_cols, y_cols) p_(p) # add a smoother p <- ggfacet(NIR_sub, x_cols, y_cols, fn = "smooth_loess") p_(p) # same output p <- ggfacet(NIR_sub, x_cols, y_cols, fn = ggally_smooth_loess) p_(p) # Change scales to be the same in for every row and for every column p <- ggfacet(NIR_sub, x_cols, y_cols, scales = "fixed") p_(p) } } GGally/man/ggally_denstrip.Rd0000644000176200001440000000142514527265752015703 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{ggally_denstrip} \alias{ggally_denstrip} \title{Tile plot with facets} \usage{ ggally_denstrip(data, mapping, ...) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used} \item{...}{other arguments being sent to stat_bin} } \description{ Displays a Tile Plot as densely as possible. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) p_(ggally_denstrip(tips, mapping = ggplot2::aes(x = total_bill, y = sex))) p_(ggally_denstrip( tips, mapping = ggplot2::aes(sex, tip), binwidth = 0.2 ) + ggplot2::scale_fill_gradient(low = "grey80", high = "black")) } \author{ Barret Schloerke } \keyword{hplot} GGally/man/ggally_summarise_by.Rd0000644000176200001440000000473414526730006016544 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{ggally_summarise_by} \alias{ggally_summarise_by} \alias{weighted_median_iqr} \alias{weighted_mean_sd} \title{Summarize a continuous variable by each value of a discrete variable} \usage{ ggally_summarise_by( data, mapping, text_fn = weighted_median_iqr, text_fn_vertical = NULL, ... ) weighted_median_iqr(x, weights = NULL) weighted_mean_sd(x, weights = NULL) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used} \item{text_fn}{function that takes an x and weights and returns a text string} \item{text_fn_vertical}{function that takes an x and weights and returns a text string, used when \code{x} is discrete and \code{y} is continuous. If not provided, will use \code{text_fn}, replacing spaces by carriage returns.} \item{...}{other arguments passed to \code{\link[ggplot2]{geom_text}(...)}} \item{x}{a numeric vector} \item{weights}{an optional numeric vectors of weights. If \code{NULL}, equal weights of 1 will be taken into account.} } \description{ Display summary statistics of a continuous variable for each value of a discrete variable. } \details{ \code{weighted_median_iqr} computes weighted median and interquartile range. \code{weighted_mean_sd} computes weighted mean and standard deviation. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive if (require(Hmisc)) { data(tips) p_(ggally_summarise_by(tips, mapping = aes(x = total_bill, y = day))) p_(ggally_summarise_by(tips, mapping = aes(x = day, y = total_bill))) # colour is kept only if equal to the discrete variable p_(ggally_summarise_by(tips, mapping = aes(x = total_bill, y = day, color = day))) p_(ggally_summarise_by(tips, mapping = aes(x = total_bill, y = day, color = sex))) p_(ggally_summarise_by(tips, mapping = aes(x = day, y = total_bill, color = day))) # custom text size p_(ggally_summarise_by(tips, mapping = aes(x = total_bill, y = day), size = 6)) # change statistic to display p_(ggally_summarise_by(tips, mapping = aes(x = total_bill, y = day), text_fn = weighted_mean_sd)) # custom stat function weighted_sum <- function(x, weights = NULL) { if (is.null(weights)) weights <- 1 paste0("Total : ", round(sum(x * weights, na.rm = TRUE), digits = 1)) } p_(ggally_summarise_by(tips, mapping = aes(x = total_bill, y = day), text_fn = weighted_sum)) } } \author{ Joseph Larmarange } \keyword{hplot} GGally/man/ggally_diagAxis.Rd0000644000176200001440000000234014526730006015565 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{ggally_diagAxis} \alias{ggally_diagAxis} \title{Internal axis labels for ggpairs} \usage{ ggally_diagAxis( data, mapping, label = mapping$x, labelSize = 5, labelXPercent = 0.5, labelYPercent = 0.55, labelHJust = 0.5, labelVJust = 0.5, gridLabelSize = 4, ... ) } \arguments{ \item{data}{dataset being plotted} \item{mapping}{aesthetics being used (x is the variable the plot will be made for)} \item{label}{title to be displayed in the middle. Defaults to \code{mapping$x}} \item{labelSize}{size of variable label} \item{labelXPercent}{percent of horizontal range} \item{labelYPercent}{percent of vertical range} \item{labelHJust}{hjust supplied to label} \item{labelVJust}{vjust supplied to label} \item{gridLabelSize}{size of grid labels} \item{...}{other arguments for geom_text} } \description{ This function is used when \code{axisLabels == "internal"}. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) p_(ggally_diagAxis(tips, ggplot2::aes(x = tip))) p_(ggally_diagAxis(tips, ggplot2::aes(x = sex))) } \author{ Jason Crowley and Barret Schloerke } GGally/man/ggally_nostic_resid.Rd0000644000176200001440000000342413764714663016543 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggnostic.R \name{ggally_nostic_resid} \alias{ggally_nostic_resid} \title{\code{\link{ggnostic}} residuals} \usage{ ggally_nostic_resid( data, mapping, ..., linePosition = 0, lineColor = brew_colors("grey"), lineSize = 0.5, lineAlpha = 1, lineType = 1, lineConfColor = brew_colors("grey"), lineConfSize = lineSize, lineConfAlpha = lineAlpha, lineConfType = 2, pVal = c(0.025, 0.975), sigma = attr(data, "broom_glance")$sigma, se = TRUE, method = "auto", formula = y ~ x ) } \arguments{ \item{data, mapping, ...}{parameters supplied to \code{\link{ggally_nostic_line}}} \item{linePosition, lineColor, lineSize, lineAlpha, lineType}{parameters supplied to \code{\link[ggplot2:geom_path]{ggplot2::geom_line()}}} \item{lineConfColor, lineConfSize, lineConfAlpha, lineConfType}{parameters supplied to the confidence interval lines} \item{pVal}{percentiles of a N(0, sigma) distribution to be drawn} \item{sigma}{sigma value for the \code{pVal} percentiles} \item{se}{boolean to determine if the confidence intervals should be displayed} \item{method, formula}{parameters supplied to \code{\link[ggplot2:geom_smooth]{ggplot2::geom_smooth()}}. Defaults to \code{"auto"} and \code{"y ~ x"}} } \value{ \pkg{ggplot2} plot object } \description{ If non-null \code{pVal} and \code{sigma} values are given, confidence interval lines will be added to the plot at the specified \code{pVal} percentiles of a N(0, sigma) distribution. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive dt <- broomify(stats::lm(mpg ~ wt + qsec + am, data = mtcars)) p_(ggally_nostic_resid(dt, ggplot2::aes(wt, .resid))) } \seealso{ \code{stats::\link[stats]{residuals}} } GGally/man/ggnet.Rd0000644000176200001440000002403215022360455013602 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggnet.R \name{ggnet} \alias{ggnet} \title{Network plot} \usage{ ggnet( net, mode = "fruchtermanreingold", layout.par = NULL, layout.exp = 0, size = 9, alpha = 1, weight = "none", weight.legend = NA, weight.method = weight, weight.min = NA, weight.max = NA, weight.cut = FALSE, group = NULL, group.legend = NA, node.group = group, node.color = NULL, node.alpha = alpha, segment.alpha = alpha, segment.color = "grey50", segment.label = NULL, segment.size = 0.25, arrow.size = 0, arrow.gap = 0, arrow.type = "closed", label = FALSE, label.nodes = label, label.size = size/2, label.trim = FALSE, legend.size = 9, legend.position = "right", names = deprecated(), quantize.weights = deprecated(), subset.threshold = deprecated(), top8.nodes = deprecated(), trim.labels = deprecated(), ... ) } \arguments{ \item{net}{an object of class \code{\link[network]{network}}, or any object that can be coerced to this class, such as an adjacency or incidence matrix, or an edge list: see \link[network]{edgeset.constructors} and \link[network]{network} for details. If the object is of class \link[igraph:aaa-igraph-package]{igraph} and the \link[intergraph:intergraph-package]{intergraph} package is installed, it will be used to convert the object: see \code{\link[intergraph]{asNetwork}} for details.} \item{mode}{a placement method from those provided in the \code{\link[sna]{sna}} package: see \link[sna:gplot.layout]{gplot.layout} for details. Also accepts the names of two numeric vertex attributes of \code{net}, or a matrix of numeric coordinates, in which case the first two columns of the matrix are used. Defaults to the Fruchterman-Reingold force-directed algorithm.} \item{layout.par}{options to be passed to the placement method, as listed in \link[sna]{gplot.layout}. Defaults to \code{NULL}.} \item{layout.exp}{a multiplier to expand the horizontal axis if node labels get clipped: see \link[scales]{expand_range} for details. Defaults to \code{0} (no expansion).} \item{size}{size of the network nodes. If the nodes are weighted, their area is proportionally scaled up to the size set by \code{size}. Defaults to \code{9}.} \item{alpha}{a level of transparency for nodes, vertices and arrows. Defaults to \code{1}.} \item{weight}{the weighting method for the nodes, which might be a vertex attribute or a vector of size values. Also accepts \code{"indegree"}, \code{"outdegree"}, \code{"degree"} or \code{"freeman"} to size the nodes by their unweighted degree centrality (\code{"degree"} and \code{"freeman"} are equivalent): see \code{\link[sna]{degree}} for details. All node weights must be positive. Defaults to \code{"none"} (no weighting).} \item{weight.legend}{the name to assign to the legend created by \code{weight}. Defaults to \code{NA} (no name).} \item{weight.method}{see \code{weight}} \item{weight.min}{whether to subset the network to nodes with a minimum size, based on the values of \code{weight}. Defaults to \code{NA} (preserves all nodes).} \item{weight.max}{whether to subset the network to nodes with a maximum size, based on the values of \code{weight}. Defaults to \code{NA} (preserves all nodes).} \item{weight.cut}{whether to cut the size of the nodes into a certain number of quantiles. Accepts \code{TRUE}, which tries to cut the sizes into quartiles, or any positive numeric value, which tries to cut the sizes into that many quantiles. If the size of the nodes do not contain the specified number of distinct quantiles, the largest possible number is used. See \code{\link[stats]{quantile}} and \code{\link[base]{cut}} for details. Defaults to \code{FALSE} (does nothing).} \item{group}{the groups of the nodes, either as a vector of values or as a vertex attribute. If set to \code{mode} on a bipartite network, the nodes will be grouped as \code{"actor"} if they belong to the primary mode and \code{"event"} if they belong to the secondary mode.} \item{group.legend}{the name to assign to the legend created by \code{group}.} \item{node.group}{see \code{group}} \item{node.color}{a vector of character strings to color the nodes with, holding as many colors as there are levels in \code{node.group}. Defaults to \code{NULL}, which will assign grayscale colors to each group.} \item{node.alpha}{transparency of the nodes. Inherits from \code{alpha}.} \item{segment.alpha}{the level of transparency of the edges. Defaults to \code{alpha}, which defaults to \code{1}.} \item{segment.color}{the color of the edges, as a color value, a vector of color values, or as an edge attribute containing color values. Defaults to \code{"grey50"}.} \item{segment.label}{the labels to plot at the middle of the edges, as a single value, a vector of values, or as an edge attribute. Defaults to \code{NULL} (no edge labels).} \item{segment.size}{the size of the edges, in points, as a single numeric value, a vector of values, or as an edge attribute. Defaults to \code{0.25}.} \item{arrow.size}{the size of the arrows for directed network edges, in points. See \code{\link[grid]{arrow}} for details. Defaults to \code{0} (no arrows).} \item{arrow.gap}{a setting aimed at improving the display of edge arrows by plotting slightly shorter edges. Accepts any value between \code{0} and \code{1}, where a value of \code{0.05} will generally achieve good results when the size of the nodes is reasonably small. Defaults to \code{0} (no shortening).} \item{arrow.type}{the type of the arrows for directed network edges. See \code{\link[grid]{arrow}} for details. Defaults to \code{"closed"}.} \item{label}{whether to label the nodes. If set to \code{TRUE}, nodes are labeled with their vertex names. If set to a vector that contains as many elements as there are nodes in \code{net}, nodes are labeled with these. If set to any other vector of values, the nodes are labeled only when their vertex name matches one of these values. Defaults to \code{FALSE} (no labels).} \item{label.nodes}{see \code{label}} \item{label.size}{the size of the node labels, in points, as a numeric value, a vector of numeric values, or as a vertex attribute containing numeric values. Defaults to \code{size / 2} (half the maximum node size), which defaults to \code{6}.} \item{label.trim}{whether to apply some trimming to the node labels. Accepts any function that can process a character vector, or a strictly positive numeric value, in which case the labels are trimmed to a fixed-length substring of that length: see \code{\link[base]{substr}} for details. Defaults to \code{FALSE} (does nothing).} \item{legend.size}{the size of the legend symbols and text, in points. Defaults to \code{9}.} \item{legend.position}{the location of the plot legend(s). Accepts all \code{legend.position} values supported by \code{\link[ggplot2]{theme}}. Defaults to \code{"right"}.} \item{names}{\ifelse{html}{\href{https://lifecycle.r-lib.org/articles/stages.html#deprecated}{\figure{lifecycle-deprecated.svg}{options: alt='[Deprecated]'}}}{\strong{[Deprecated]}} see \code{group.legend} and \code{size.legend}} \item{quantize.weights}{\ifelse{html}{\href{https://lifecycle.r-lib.org/articles/stages.html#deprecated}{\figure{lifecycle-deprecated.svg}{options: alt='[Deprecated]'}}}{\strong{[Deprecated]}} see \code{weight.cut}} \item{subset.threshold}{\ifelse{html}{\href{https://lifecycle.r-lib.org/articles/stages.html#deprecated}{\figure{lifecycle-deprecated.svg}{options: alt='[Deprecated]'}}}{\strong{[Deprecated]}} see \code{weight.min}} \item{top8.nodes}{\ifelse{html}{\href{https://lifecycle.r-lib.org/articles/stages.html#deprecated}{\figure{lifecycle-deprecated.svg}{options: alt='[Deprecated]'}}}{\strong{[Deprecated]}} this functionality was experimental and has been removed entirely from \code{ggnet}} \item{trim.labels}{\ifelse{html}{\href{https://lifecycle.r-lib.org/articles/stages.html#deprecated}{\figure{lifecycle-deprecated.svg}{options: alt='[Deprecated]'}}}{\strong{[Deprecated]}} see \code{label.trim}} \item{...}{other arguments passed to the \code{geom_text} object that sets the node labels: see \code{\link[ggplot2]{geom_text}} for details.} } \description{ \ifelse{html}{\href{https://lifecycle.r-lib.org/articles/stages.html#deprecated}{\figure{lifecycle-deprecated.svg}{options: alt='[Deprecated]'}}}{\strong{[Deprecated]}} Function for plotting network objects using \pkg{ggplot2}, now replaced by the \code{\link{ggnet2}} function, which provides additional control over plotting parameters. Please visit \url{https://github.com/briatte/ggnet} for the latest version of ggnet2, and \url{https://briatte.github.io/ggnet/} for a vignette that contains many examples and explanations. } \details{ The degree centrality measures that can be produced through the \code{weight} argument will take the directedness of the network into account, but will be unweighted. To compute weighted network measures, see the \code{tnet} package by Tore Opsahl (\code{help("tnet", package = "tnet")}). } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive library(network) # random adjacency matrix x <- 10 ndyads <- x * (x - 1) density <- x / ndyads m <- matrix(0, nrow = x, ncol = x) dimnames(m) <- list(letters[1:x], letters[1:x]) m[row(m) != col(m)] <- runif(ndyads) < density m # random undirected network n <- network::network(m, directed = FALSE) n ggnet(n, label = TRUE, alpha = 1, color = "white", segment.color = "black") # random groups g <- sample(letters[1:3], 10, replace = TRUE) g # color palette p <- c("a" = "steelblue", "b" = "forestgreen", "c" = "tomato") p_(ggnet(n, node.group = g, node.color = p, label = TRUE, color = "white")) # edge arrows on a directed network p_(ggnet(network(m, directed = TRUE), arrow.gap = 0.05, arrow.size = 10)) } \seealso{ \code{\link{ggnet2}} in this package, \code{\link[sna]{gplot}} in the \code{\link[sna]{sna}} package, and \code{\link[network]{plot.network}} in the \code{\link[network]{network}} package } \author{ Moritz Marbach and Francois Briatte, with help from Heike Hofmann, Pedro Jordano and Ming-Yu Liu } \keyword{internal} GGally/man/mapping_swap_x_y.Rd0000644000176200001440000000073213663637143016055 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{mapping_swap_x_y} \alias{mapping_swap_x_y} \title{Swap x and y mapping} \usage{ mapping_swap_x_y(mapping) } \arguments{ \item{mapping}{output of \code{ggplot2::\link[ggplot2]{aes}(...)}} } \value{ Aes mapping with the x and y values switched } \description{ Swap x and y mapping } \examples{ mapping <- ggplot2::aes(Petal.Length, Sepal.Width) mapping mapping_swap_x_y(mapping) } GGally/man/pigs.Rd0000644000176200001440000000222713761572054013452 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/data-pigs.R \docType{data} \name{pigs} \alias{pigs} \title{United Kingdom Pig Production} \format{ A data frame with 48 rows and 8 variables } \usage{ data(pigs) } \description{ This data contains about the United Kingdom Pig Production from the book 'Data' by Andrews and Herzberg. The original data can be on Statlib: http://lib.stat.cmu.edu/datasets/Andrews/T62.1 } \details{ The time variable has been added from a combination of year and quarter \itemize{ \item time year + (quarter - 1) / 4 \item year year of production \item quarter quarter of the year of production \item gilts number of sows giving birth for the first time \item profit ratio of price to an index of feed price \item s_per_herdsz ratio of the number of breeding pigs slaughtered to the total breeding herd size \item production number of pigs slaughtered that were reared for meat \item herdsz breeding herd size } } \references{ Andrews, David F., and Agnes M. Herzberg. Data: a collection of problems from many fields for the student and research worker. Springer Science & Business Media, 2012. } \keyword{datasets} GGally/man/singleClassOrder.Rd0000644000176200001440000000165513761572054015757 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggparcoord.R \name{singleClassOrder} \alias{singleClassOrder} \title{Order axis variables} \usage{ singleClassOrder(classVar, axisVars, specClass = NULL) } \arguments{ \item{classVar}{class variable (vector from original dataset)} \item{axisVars}{variables to be plotted as axes (data frame)} \item{specClass}{character string matching to level of \code{classVar}; instead of looking for separation between any class and the rest, will only look for separation between this class and the rest} } \value{ character vector of names of axisVars ordered such that the first variable has the most separation between one of the classes and the rest, and the last variable has the least (as measured by F-statistics from an ANOVA) } \description{ Order axis variables by separation between one class and the rest (most separation to least). } \author{ Jason Crowley } GGally/man/ggally_facethist.Rd0000644000176200001440000000133214527265752016022 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{ggally_facethist} \alias{ggally_facethist} \title{Faceted histogram} \usage{ ggally_facethist(data, mapping, ...) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used} \item{...}{parameters sent to stat_bin()} } \description{ Display subsetted histograms of the data in different panels. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) p_(ggally_facethist(tips, mapping = ggplot2::aes(x = tip, y = sex))) p_(ggally_facethist(tips, mapping = ggplot2::aes(x = tip, y = sex), binwidth = 0.1)) } \author{ Barret Schloerke } \keyword{hplot} GGally/man/add_ref_boxes.Rd0000644000176200001440000000135114321334313015254 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gglyph.R \name{add_ref_boxes} \alias{add_ref_boxes} \title{Add reference boxes around each cell of the glyphmap.} \usage{ add_ref_boxes( data, var_fill = NULL, color = "white", size = 0.5, fill = NA, ... ) } \arguments{ \item{data}{A glyphmap structure.} \item{var_fill}{Variable name to use to set the fill color} \item{color}{Set the color to draw in, default is "white"} \item{size}{Set the line size, default is 0.5} \item{fill}{fill value used if \code{var_fill} is \code{NULL}} \item{...}{other arguments passed onto \code{\link[ggplot2:geom_tile]{ggplot2::geom_rect()}}} } \description{ Add reference boxes around each cell of the glyphmap. } GGally/man/ggduo.Rd0000644000176200001440000002526415022036102013600 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggpairs.R \name{ggduo} \alias{ggduo} \title{\pkg{ggplot2} generalized pairs plot for two columns sets of data} \usage{ ggduo( data, mapping = NULL, columnsX = 1:ncol(data), columnsY = 1:ncol(data), title = NULL, types = list(continuous = "smooth_loess", comboVertical = "box_no_facet", comboHorizontal = "facethist", discrete = "count"), axisLabels = c("show", "none"), columnLabelsX = colnames(data[columnsX]), columnLabelsY = colnames(data[columnsY]), labeller = "label_value", switch = NULL, xlab = NULL, ylab = NULL, showStrips = NULL, legend = NULL, cardinality_threshold = 15, progress = NULL, xProportions = NULL, yProportions = NULL, legends = deprecated() ) } \arguments{ \item{data}{data set using. Can have both numerical and categorical data.} \item{mapping}{aesthetic mapping (besides \code{x} and \code{y}). See \code{\link[ggplot2]{aes}()}. If \code{mapping} is numeric, \code{columns} will be set to the \code{mapping} value and \code{mapping} will be set to \code{NULL}.} \item{columnsX, columnsY}{which columns are used to make plots. Defaults to all columns.} \item{title, xlab, ylab}{title, x label, and y label for the graph} \item{types}{see Details} \item{axisLabels}{either "show" to display axisLabels or "none" for no axis labels} \item{columnLabelsX, columnLabelsY}{label names to be displayed. Defaults to names of columns being used.} \item{labeller}{labeller for facets. See \code{\link[ggplot2]{labellers}}. Common values are \code{"label_value"} (default) and \code{"label_parsed"}.} \item{switch}{switch parameter for facet_grid. See \code{ggplot2::\link[ggplot2]{facet_grid}}. By default, the labels are displayed on the top and right of the plot. If \code{"x"}, the top labels will be displayed to the bottom. If \code{"y"}, the right-hand side labels will be displayed to the left. Can also be set to \code{"both"}} \item{showStrips}{boolean to determine if each plot's strips should be displayed. \code{NULL} will default to the top and right side plots only. \code{TRUE} or \code{FALSE} will turn all strips on or off respectively.} \item{legend}{May be the two objects described below or the default \code{NULL} value. The legend position can be moved by using ggplot2's theme element \code{pm + theme(legend.position = "bottom")} \describe{\item{a numeric vector of length 2}{provides the location of the plot to use the legend for the plot matrix's legend. Such as \code{legend = c(3,5)} which will use the legend from the plot in the third row and fifth column}\item{a single numeric value}{provides the location of a plot according to the display order. Such as \code{legend = 3} in a plot matrix with 2 rows and 5 columns displayed by column will return the plot in position \code{c(1,2)}}\item{a object from \code{\link{grab_legend}()}}{a predetermined plot legend that will be displayed directly}}} \item{cardinality_threshold}{maximum number of levels allowed in a character / factor column. Set this value to NULL to not check factor columns. Defaults to 15} \item{progress}{\code{NULL} (default) for a progress bar in interactive sessions with more than 15 plots, \code{TRUE} for a progress bar, \code{FALSE} for no progress bar, or a function that accepts at least a plot matrix and returns a new \code{progress::\link[progress]{progress_bar}}. See \code{\link{ggmatrix_progress}}.} \item{xProportions, yProportions}{Value to change how much area is given for each plot. Either \code{NULL} (default), numeric value matching respective length, \code{grid::\link[grid]{unit}} object with matching respective length or \code{"auto"} for automatic relative proportions based on the number of levels for categorical variables.} \item{legends}{\ifelse{html}{\href{https://lifecycle.r-lib.org/articles/stages.html#deprecated}{\figure{lifecycle-deprecated.svg}{options: alt='[Deprecated]'}}}{\strong{[Deprecated]}}} } \description{ Make a matrix of plots with a given data set with two different column sets } \details{ \code{types} is a list that may contain the variables 'continuous', 'combo', 'discrete', and 'na'. Each element of the list may be a function or a string. If a string is supplied, If a string is supplied, it must be a character string representing the tail end of a \code{ggally_NAME} function. The list of current valid \code{ggally_NAME} functions is visible in a dedicated vignette. \describe{ \item{continuous}{This option is used for continuous X and Y data.} \item{comboHorizontal}{This option is used for either continuous X and categorical Y data or categorical X and continuous Y data.} \item{comboVertical}{This option is used for either continuous X and categorical Y data or categorical X and continuous Y data.} \item{discrete}{This option is used for categorical X and Y data.} \item{na}{This option is used when all X data is \code{NA}, all Y data is \code{NA}, or either all X or Y data is \code{NA}.} } If 'blank' is ever chosen as an option, then ggduo will produce an empty plot. If a function is supplied as an option, it should implement the function api of \code{function(data, mapping, ...){#make ggplot2 plot}}. If a specific function needs its parameters set, \code{\link{wrap}(fn, param1 = val1, param2 = val2)} the function with its parameters. } \examples{ # small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(baseball) # Keep players from 1990-1995 with at least one at bat # Add how many singles a player hit # (must do in two steps as X1b is used in calculations) dt <- transform( subset(baseball, year >= 1990 & year <= 1995 & ab > 0), X1b = h - X2b - X3b - hr ) # Add # the player's batting average, # the player's slugging percentage, # and the player's on base percentage # Make factor a year, as each season is discrete dt <- transform( dt, batting_avg = h / ab, slug = (X1b + 2 * X2b + 3 * X3b + 4 * hr) / ab, on_base = (h + bb + hbp) / (ab + bb + hbp), year = as.factor(year) ) pm <- ggduo( dt, c("year", "g", "ab", "lg"), c("batting_avg", "slug", "on_base"), mapping = ggplot2::aes(color = lg) ) # Prints, but # there is severe over plotting in the continuous plots # the labels could be better # want to add more hitting information p_(pm) # address overplotting issues and add a title pm <- ggduo( dt, c("year", "g", "ab", "lg"), c("batting_avg", "slug", "on_base"), columnLabelsX = c("year", "player game count", "player at bat count", "league"), columnLabelsY = c("batting avg", "slug \%", "on base \%"), title = "Baseball Hitting Stats from 1990-1995", mapping = ggplot2::aes(color = lg), types = list( # change the shape and add some transparency to the points continuous = wrap("smooth_loess", alpha = 0.50, shape = "+") ), showStrips = FALSE ) p_(pm) # Use "auto" to adapt width of the sub-plots pm <- ggduo( dt, c("year", "g", "ab", "lg"), c("batting_avg", "slug", "on_base"), mapping = ggplot2::aes(color = lg), xProportions = "auto" ) p_(pm) # Custom widths & heights of the sub-plots pm <- ggduo( dt, c("year", "g", "ab", "lg"), c("batting_avg", "slug", "on_base"), mapping = ggplot2::aes(color = lg), xProportions = c(6, 4, 3, 2), yProportions = c(1, 2, 1) ) p_(pm) # Example derived from: ## R Data Analysis Examples | Canonical Correlation Analysis. UCLA: Institute for Digital ## Research and Education. ## from http://www.stats.idre.ucla.edu/r/dae/canonical-correlation-analysis ## (accessed May 22, 2017). # "Example 1. A researcher has collected data on three psychological variables, four # academic variables (standardized test scores) and gender for 600 college freshman. # She is interested in how the set of psychological variables relates to the academic # variables and gender. In particular, the researcher is interested in how many # dimensions (canonical variables) are necessary to understand the association between # the two sets of variables." data(psychademic) summary(psychademic) (psych_variables <- attr(psychademic, "psychology")) (academic_variables <- attr(psychademic, "academic")) ## Within correlation p_(ggpairs(psychademic, columns = psych_variables)) p_(ggpairs(psychademic, columns = academic_variables)) ## Between correlation loess_with_cor <- function(data, mapping, ..., method = "pearson") { x <- eval_data_col(data, mapping$x) y <- eval_data_col(data, mapping$y) cor <- cor(x, y, method = method) ggally_smooth_loess(data, mapping, ...) + ggplot2::geom_label( data = data.frame( x = min(x, na.rm = TRUE), y = max(y, na.rm = TRUE), lab = round(cor, digits = 3) ), mapping = ggplot2::aes(x = x, y = y, label = lab), hjust = 0, vjust = 1, size = 5, fontface = "bold", inherit.aes = FALSE # do not inherit anything from the ... ) } pm <- ggduo( psychademic, rev(psych_variables), academic_variables, types = list(continuous = loess_with_cor), showStrips = FALSE ) suppressWarnings(p_(pm)) # ignore warnings from loess # add color according to sex pm <- ggduo( psychademic, mapping = ggplot2::aes(color = sex), rev(psych_variables), academic_variables, types = list(continuous = loess_with_cor), showStrips = FALSE, legend = c(5, 2) ) suppressWarnings(p_(pm)) # add color according to sex pm <- ggduo( psychademic, mapping = ggplot2::aes(color = motivation), rev(psych_variables), academic_variables, types = list(continuous = loess_with_cor), showStrips = FALSE, legend = c(5, 2) ) + ggplot2::theme(legend.position = "bottom") suppressWarnings(p_(pm)) # dt, # c("year", "g", "ab", "lg", "lg"), # c("batting_avg", "slug", "on_base", "hit_type"), # columnLabelsX = c("year", "player game count", "player at bat count", "league", ""), # columnLabelsY = c("batting avg", "slug \%", "on base \%", "hit type"), # title = "Baseball Hitting Stats from 1990-1995 (player strike in 1994)", # mapping = aes(color = year), # types = list( # continuous = wrap("smooth_loess", alpha = 0.50, shape = "+"), # comboHorizontal = wrap(display_hit_type_combo, binwidth = 15), # discrete = wrap(display_hit_type_discrete, color = "black", size = 0.15) # ), # showStrips = FALSE ## make the 5th column blank, except for the legend # australia_PISA2012, # c("gender", "age", "homework", "possessions"), # c("PV1MATH", "PV2MATH", "PV3MATH", "PV4MATH", "PV5MATH"), # types = list( # continuous = "points", # combo = "box", # discrete = "ratio" # ) # australia_PISA2012, # c("gender", "age", "homework", "possessions"), # c("PV1MATH", "PV2MATH", "PV3MATH", "PV4MATH", "PV5MATH"), # mapping = ggplot2::aes(color = gender), # types = list( # continuous = wrap("smooth", alpha = 0.25, method = "loess"), # combo = "box", # discrete = "ratio" # ) } GGally/man/ggally_nostic_std_resid.Rd0000644000176200001440000000174613764714663017422 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggnostic.R \name{ggally_nostic_std_resid} \alias{ggally_nostic_std_resid} \title{\code{\link{ggnostic}} standardized residuals} \usage{ ggally_nostic_std_resid(data, mapping, ..., sigma = 1) } \arguments{ \item{data, mapping, ...}{parameters supplied to \code{\link{ggally_nostic_resid}}} \item{sigma}{sigma value for the \code{pVal} percentiles. Set to 1 for standardized residuals} } \value{ \pkg{ggplot2} plot object } \description{ If non-null \code{pVal} and \code{sigma} values are given, confidence interval lines will be added to the plot at the specified \code{pVal} locations of a N(0, 1) distribution. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive dt <- broomify(stats::lm(mpg ~ wt + qsec + am, data = mtcars)) p_(ggally_nostic_std_resid(dt, ggplot2::aes(wt, .std.resid))) } \seealso{ \code{\link[stats:influence.measures]{stats::rstandard()}} } GGally/man/ggally_trends.Rd0000644000176200001440000000352214526730006015336 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggaly_trends.R \name{ggally_trends} \alias{ggally_trends} \title{Trends line plot} \usage{ ggally_trends(data, mapping, ..., include_zero = FALSE) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used} \item{...}{other arguments passed to \code{\link[ggplot2:geom_path]{ggplot2::geom_line()}}} \item{include_zero}{Should 0 be included on the y-axis?} } \description{ Plot trends using line plots. For continuous y variables, plot the evolution of the mean. For binary y variables, plot the evolution of the proportion. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) tips_f <- tips tips_f$day <- factor(tips$day, c("Thur", "Fri", "Sat", "Sun")) # Numeric variable p_(ggally_trends(tips_f, mapping = aes(x = day, y = total_bill))) p_(ggally_trends(tips_f, mapping = aes(x = day, y = total_bill, colour = time))) # Binary variable p_(ggally_trends(tips_f, mapping = aes(x = day, y = smoker))) p_(ggally_trends(tips_f, mapping = aes(x = day, y = smoker, colour = sex))) # Discrete variable with 3 or more categories p_(ggally_trends(tips_f, mapping = aes(x = smoker, y = day))) p_(ggally_trends(tips_f, mapping = aes(x = smoker, y = day, color = sex))) # Include zero on Y axis p_(ggally_trends(tips_f, mapping = aes(x = day, y = total_bill), include_zero = TRUE)) p_(ggally_trends(tips_f, mapping = aes(x = day, y = smoker), include_zero = TRUE)) # Change line size p_(ggally_trends(tips_f, mapping = aes(x = day, y = smoker, colour = sex), size = 3)) # Define weights with the appropriate aesthetic d <- as.data.frame(Titanic) p_(ggally_trends( d, mapping = aes(x = Class, y = Survived, weight = Freq, color = Sex), include_zero = TRUE )) } \author{ Joseph Larmarange } \keyword{hplot} GGally/man/ggally_box.Rd0000644000176200001440000000166014527265752014644 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{ggally_box} \alias{ggally_box} \alias{ggally_box_no_facet} \title{Box plot} \usage{ ggally_box(data, mapping, ...) ggally_box_no_facet(data, mapping, ...) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used} \item{...}{other arguments being supplied to geom_boxplot} } \description{ Make a box plot with a given data set. \code{ggally_box_no_facet} will be a single panel plot, while \code{ggally_box} will be a faceted plot } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) p_(ggally_box(tips, mapping = ggplot2::aes(x = total_bill, y = sex))) p_(ggally_box( tips, mapping = ggplot2::aes(sex, total_bill, color = sex), outlier.colour = "red", outlier.shape = 13, outlier.size = 8 )) } \author{ Barret Schloerke } \keyword{hplot} GGally/man/reexports.Rd0000644000176200001440000000233215022360455014530 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/reexports.R \docType{import} \name{reexports} \alias{reexports} \alias{ggcoef_model} \alias{ggcoef_compare} \alias{ggcoef_multinom} \alias{ggcoef_plot} \alias{signif_stars} \alias{geom_stripped_cols} \alias{geom_stripped_rows} \alias{stat_cross} \alias{StatCross} \alias{stat_prop} \alias{StatProp} \alias{stat_weighted_mean} \alias{StatWeightedMean} \title{Objects exported from other packages} \keyword{internal} \description{ These objects are imported from other packages. Follow the links below to see their documentation. \describe{ \item{ggstats}{\code{\link[ggstats:geom_stripped_rows]{geom_stripped_cols}}, \code{\link[ggstats]{geom_stripped_rows}}, \code{\link[ggstats:ggcoef_model]{ggcoef_compare}}, \code{\link[ggstats]{ggcoef_model}}, \code{\link[ggstats:ggcoef_multicomponents]{ggcoef_multinom}}, \code{\link[ggstats:ggcoef_model]{ggcoef_plot}}, \code{\link[ggstats]{signif_stars}}, \code{\link[ggstats]{stat_cross}}, \code{\link[ggstats]{stat_prop}}, \code{\link[ggstats]{stat_weighted_mean}}, \code{\link[ggstats:stat_cross]{StatCross}}, \code{\link[ggstats:stat_prop]{StatProp}}, \code{\link[ggstats:stat_weighted_mean]{StatWeightedMean}}} }} GGally/man/ggcoef.Rd0000644000176200001440000000524615022037246013735 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggcoef.R \name{ggcoef} \alias{ggcoef} \title{Model coefficients with \pkg{broom} and \pkg{ggplot2}} \usage{ ggcoef( x, mapping = aes(!!as.name("estimate"), !!as.name("term")), conf.int = TRUE, conf.level = 0.95, exponentiate = FALSE, exclude_intercept = FALSE, vline = TRUE, vline_intercept = "auto", vline_color = "gray50", vline_linetype = "dotted", vline_size = 1, errorbar_color = "gray25", errorbar_height = 0, errorbar_linetype = "solid", errorbar_size = 0.5, sort = c("none", "ascending", "descending"), ... ) } \arguments{ \item{x}{a model object to be tidied with \code{\link[broom:reexports]{broom::tidy()}} or a data frame (see Details)} \item{mapping}{default aesthetic mapping} \item{conf.int}{display confidence intervals as error bars?} \item{conf.level}{level of confidence intervals (passed to \code{\link[broom:reexports]{broom::tidy()}} if \code{x} is not a data frame)} \item{exponentiate}{if \code{TRUE}, x-axis will be logarithmic (also passed to \code{\link[broom:reexports]{broom::tidy()}} if \code{x} is not a data frame)} \item{exclude_intercept}{should the intercept be excluded from the plot?} \item{vline}{print a vertical line?} \item{vline_intercept}{\code{xintercept} for the vertical line. \code{"auto"} for \code{x = 0} (or \code{x = 1} if \code{exponentiate} is \code{TRUE})} \item{vline_color}{color of the vertical line} \item{vline_linetype}{line type of the vertical line} \item{vline_size}{size of the vertical line} \item{errorbar_color}{color of the error bars} \item{errorbar_height}{height of the error bars} \item{errorbar_linetype}{line type of the error bars} \item{errorbar_size}{size of the error bars} \item{sort}{\code{"none"} (default) do not sort, \code{"ascending"} sort by increasing coefficient value, or \code{"descending"} sort by decreasing coefficient value} \item{...}{additional arguments sent to \code{\link[ggplot2:geom_point]{ggplot2::geom_point()}}} } \description{ Plot the coefficients of a model with \pkg{broom} and \pkg{ggplot2}. For an updated and improved version, see \code{\link[=ggcoef_model]{ggcoef_model()}}. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive library(broom) reg <- lm(Sepal.Length ~ Sepal.Width + Petal.Length + Petal.Width, data = iris) p_(ggcoef(reg)) \donttest{ d <- as.data.frame(Titanic) reg2 <- glm(Survived ~ Sex + Age + Class, family = binomial, data = d, weights = d$Freq) ggcoef(reg2, exponentiate = TRUE) ggcoef( reg2, exponentiate = TRUE, exclude_intercept = TRUE, errorbar_height = .2, color = "blue", sort = "ascending" ) } } GGally/man/scatmat.Rd0000644000176200001440000000201414527265752014143 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggscatmat.R \name{scatmat} \alias{scatmat} \title{Plots the lowertriangle and density plots of the scatter plot matrix.} \usage{ scatmat(data, columns = 1:ncol(data), color = NULL, alpha = 1) } \arguments{ \item{data}{a data matrix. Should contain numerical (continuous) data.} \item{columns}{an option to choose the column to be used in the raw dataset. Defaults to \code{1:ncol(data)}} \item{color}{an option to group the dataset by the factor variable and color them by different colors. Defaults to \code{NULL}} \item{alpha}{an option to set the transparency in scatterplots for large data. Defaults to \code{1}.} } \description{ Function for making scatterplots in the lower triangle and diagonal density plots. } \examples{ # small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(flea) p_(scatmat(flea, columns = 2:4)) p_(scatmat(flea, columns = 2:4, color = "species")) } \author{ Mengjia Ni, Di Cook } GGally/man/vig_ggally.Rd0000644000176200001440000000130613667446546014644 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/vig_ggally.R \name{vig_ggally} \alias{vig_ggally} \title{View GGally vignettes} \usage{ vig_ggally(name) } \arguments{ \item{name}{Vignette name to open. If no name is provided, the vignette index will be opened} } \description{ This function will open the directly to the vignette requested. If no \code{name} is provided, the index of all \pkg{GGally} vignettes will be opened. } \details{ This method allows for vignettes to be hosted remotely, reducing \pkg{GGally}'s package size, and installation time. } \examples{ \donttest{ # View `ggnostic` vignette vig_ggally("ggnostic") # View all vignettes by GGally vig_ggally() } } GGally/man/nasa.Rd0000644000176200001440000000164513761572054013435 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/data-nasa.R \docType{data} \name{nasa} \alias{nasa} \title{Data from the Data Expo JSM 2006.} \format{ A data frame with 41472 rows and 17 variables } \usage{ data(nasa) } \description{ This data was provided by NASA for the competition. } \details{ The data shows 6 years of monthly measurements of a 24x24 spatial grid from Central America: \itemize{ \item time integer specifying temporal order of measurements \item x, y, lat, long spatial location of measurements. \item cloudhigh, cloudlow, cloudmid, ozone, pressure, surftemp, temperature are the various satellite measurements. \item date, day, month, year specifying the time of measurements. \item id unique ide for each spatial position. } } \references{ Murrell, P. (2010) The 2006 Data Expo of the American Statistical Association. Computational Statistics, 25:551-554. } \keyword{datasets} GGally/man/add_to_ggmatrix.Rd0000644000176200001440000000604315027521001015623 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggpairs_add.R \name{add_to_ggmatrix} \alias{add_to_ggmatrix} \title{Modify a \code{\link{ggmatrix}} object by adding an \pkg{ggplot2} object to all plots} \usage{ add_to_ggmatrix(e1, e2, location = NULL, rows = NULL, cols = NULL) } \arguments{ \item{e1}{An object of class \code{\link{ggnostic}} or \code{ggplot}} \item{e2}{A component to add to \code{e1}} \item{location}{\describe{ \item{\code{"all"}, \code{TRUE}}{All row and col combinations} \item{\code{"none"}}{No row and column combinations} \item{\code{"upper"}}{Locations where the column value is higher than the row value} \item{\code{"lower"}}{Locations where the row value is higher than the column value} \item{\code{"diag"}}{Locations where the column value is equal to the row value} \item{\code{matrix} or \code{data.frame}}{ \code{matrix} values will be converted into \code{data.frame}s. \itemize{ \item A \code{data.frame} with the exact column names \code{c("row", "col")} \item A \code{data.frame} with the number of rows and columns matching the plot matrix object provided. Each cell will be tested for a "truthy" value to determine if the location should be kept. } } }} \item{rows}{numeric vector of the rows to be used. Will be used with \code{cols} if \code{location} is \code{NULL}} \item{cols}{numeric vector of the cols to be used. Will be used with \code{rows} if \code{location} is \code{NULL}} } \description{ This operator allows you to add \pkg{ggplot2} objects to a \code{\link{ggmatrix}} object. } \details{ If the first object is an object of class \code{\link{ggmatrix}}, you can add the following types of objects, and it will return a modified \pkg{ggplot2} object. \itemize{ \item \code{theme}: update plot theme \item \code{scale}: replace current scale \item \code{coord}: override current coordinate system } The \code{+} operator completely replaces elements with elements from e2. \code{add_to_ggmatrix} gives you more control to modify only some subplots. This function may be replaced and/or removed in the future. \Sexpr[results=rd, stage=render]{lifecycle::badge("experimental")} } \examples{ # small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) pm <- ggpairs(tips[, 2:4], ggplot2::aes(color = sex)) ## change to black and white theme pm + ggplot2::theme_bw() ## change to linedraw theme p_(pm + ggplot2::theme_linedraw()) ## change to custom theme p_(pm + ggplot2::theme(panel.background = ggplot2::element_rect(fill = "lightblue"))) ## add a list of information extra <- list(ggplot2::theme_bw(), ggplot2::labs(caption = "My caption!")) p_(pm + extra) ## modify scale p_(pm + scale_fill_brewer(type = "qual")) ## only first row p_(add_to_ggmatrix(pm, scale_fill_brewer(type = "qual"), rows = 1:2)) ## only second col p_(add_to_ggmatrix(pm, scale_fill_brewer(type = "qual"), cols = 2:3)) ## only to upper triangle of plot matrix p_(add_to_ggmatrix( pm, scale_fill_brewer(type = "qual"), location = "upper" )) } \seealso{ \code{\link{ggmatrix_location}} } GGally/man/plot_types.Rd0000644000176200001440000000060613665760216014713 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/find-combo.R \name{plot_types} \alias{plot_types} \title{Plot Types} \usage{ plot_types(data, columnsX, columnsY, allowDiag = TRUE) } \arguments{ \item{data}{data set to be used} } \description{ Retrieves the type of plot that should be used for all combinations } \author{ Barret Schloerke } \keyword{internal} GGally/man/is_ggmatrix.Rd0000644000176200001440000000066015031030167015006 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggpairs_add.R \name{is_ggmatrix} \alias{is_ggmatrix} \title{Check if an object is a ggmatrix} \usage{ is_ggmatrix(x) } \arguments{ \item{x}{An object to check} } \value{ Logical value indicating if the object is a \code{ggmatrix} } \description{ Check if an object is a ggmatrix } \examples{ is_ggmatrix(ggpairs(mtcars)) is_ggmatrix(ggplot2::ggplot()) } GGally/man/uppertriangle.Rd0000644000176200001440000000165014321332407015355 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggscatmat.R \name{uppertriangle} \alias{uppertriangle} \title{Rearrange dataset as the preparation of \code{\link{ggscatmat}} function} \usage{ uppertriangle( data, columns = 1:ncol(data), color = NULL, corMethod = "pearson" ) } \arguments{ \item{data}{a data matrix. Should contain numerical (continuous) data.} \item{columns}{an option to choose the column to be used in the raw dataset. Defaults to \code{1:ncol(data)}} \item{color}{an option to choose a factor variable to be grouped with. Defaults to \code{(NULL)}} \item{corMethod}{method argument supplied to \code{\link[stats]{cor}}} } \description{ Function for making the dataset used to plot the uppertriangle plots. } \examples{ data(flea) head(uppertriangle(flea, columns = 2:4)) head(uppertriangle(flea)) head(uppertriangle(flea, color = "species")) } \author{ Mengjia Ni, Di Cook } GGally/man/mapping_string.Rd0000644000176200001440000000062313663637143015531 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{mapping_string} \alias{mapping_string} \title{Aes name} \usage{ mapping_string(aes_col) } \arguments{ \item{aes_col}{Single value from \code{ggplot2::\link[ggplot2]{aes}(...)}} } \value{ character string } \description{ Aes name } \examples{ mapping <- ggplot2::aes(Petal.Length) mapping_string(mapping$x) } GGally/man/ggscatmat.Rd0000644000176200001440000000240213666472400014453 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggscatmat.R \name{ggscatmat} \alias{ggscatmat} \title{Traditional scatterplot matrix for purely quantitative variables} \usage{ ggscatmat( data, columns = 1:ncol(data), color = NULL, alpha = 1, corMethod = "pearson" ) } \arguments{ \item{data}{a data matrix. Should contain numerical (continuous) data.} \item{columns}{an option to choose the column to be used in the raw dataset. Defaults to \code{1:ncol(data)}.} \item{color}{an option to group the dataset by the factor variable and color them by different colors. Defaults to \code{NULL}, i.e. no coloring. If supplied, it will be converted to a factor.} \item{alpha}{an option to set the transparency in scatterplots for large data. Defaults to \code{1}.} \item{corMethod}{method argument supplied to \code{\link[stats]{cor}}} } \description{ This function makes a scatterplot matrix for quantitative variables with density plots on the diagonal and correlation printed in the upper triangle. } \examples{ # small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(flea) p_(ggscatmat(flea, columns = 2:4)) p_(ggscatmat(flea, columns = 2:4, color = "species")) } \author{ Mengjia Ni, Di Cook } GGally/man/tips.Rd0000644000176200001440000000161414527265752013473 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/data-tips.R \docType{data} \name{tips} \alias{tips} \title{Tipping data} \format{ A data frame with 244 rows and 7 variables } \usage{ tips } \description{ One waiter recorded information about each tip he received over a period of a few months working in one restaurant. He collected several variables: } \details{ \itemize{ \item tip in dollars, \item bill in dollars, \item sex of the bill payer, \item whether there were smokers in the party, \item day of the week, \item time of day, \item size of the party. } In all he recorded 244 tips. The data was reported in a collection of case studies for business statistics (Bryant & Smith 1995). } \references{ Bryant, P. G. and Smith, M (1995) \emph{Practical Data Analysis: Case Studies in Business Statistics}. Homewood, IL: Richard D. Irwin Publishing: } \keyword{datasets} GGally/man/ggally_nostic_sigma.Rd0000644000176200001440000000261013764714663016531 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggnostic.R \name{ggally_nostic_sigma} \alias{ggally_nostic_sigma} \title{\code{\link{ggnostic}} leave one out model sigma} \usage{ ggally_nostic_sigma( data, mapping, ..., lineColor = brew_colors("grey"), linePosition = attr(data, "broom_glance")$sigma ) } \arguments{ \item{data, mapping, ..., lineColor}{parameters supplied to \code{\link{ggally_nostic_line}}} \item{linePosition}{line that is drawn in the background of the plot. Defaults to the overall model's sigma value.} } \value{ \pkg{ggplot2} plot object } \description{ A function to display \code{\link[stats:lm.influence]{stats::influence()}}'s sigma value. } \details{ As stated in \code{\link[stats:lm.influence]{stats::influence()}} documentation: sigma: a vector whose i-th element contains the estimate of the residual standard deviation obtained when the i-th case is dropped from the regression. (The approximations needed for GLMs can result in this being 'NaN'.) A line is added to display the overall model's sigma value. This gives a baseline for comparison } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive dt <- broomify(stats::lm(mpg ~ wt + qsec + am, data = mtcars)) p_(ggally_nostic_sigma(dt, ggplot2::aes(wt, .sigma))) } \seealso{ \code{\link[stats:lm.influence]{stats::influence()}} } GGally/man/ggally_nostic_se_fit.Rd0000644000176200001440000000265413764714663016712 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggnostic.R \name{ggally_nostic_se_fit} \alias{ggally_nostic_se_fit} \title{\code{\link{ggnostic}} fitted value's standard error} \usage{ ggally_nostic_se_fit( data, mapping, ..., lineColor = brew_colors("grey"), linePosition = NULL ) } \arguments{ \item{data, mapping, ..., lineColor}{parameters supplied to \code{\link{ggally_nostic_line}}} \item{linePosition}{base comparison for a perfect fit} } \value{ \pkg{ggplot2} plot object } \description{ A function to display \code{stats::\link[stats]{predict}}'s standard errors } \details{ As stated in \code{stats::\link[stats]{predict}} documentation: If the logical 'se.fit' is 'TRUE', standard errors of the predictions are calculated. If the numeric argument 'scale' is set (with optional ''df'), it is used as the residual standard deviation in the computation of the standard errors, otherwise this is extracted from the model fit. Since the se.fit is \code{TRUE} and scale is unset by default, the standard errors are extracted from the model fit. A base line of 0 is added to give reference to a perfect fit. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive dt <- broomify(stats::lm(mpg ~ wt + qsec + am, data = mtcars)) p_(ggally_nostic_se_fit(dt, ggplot2::aes(wt, .se.fit))) } \seealso{ \code{\link[stats:lm.influence]{stats::influence()}} } GGally/man/str.ggmatrix.Rd0000644000176200001440000000107115027521001015114 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggpairs_internal_plots.R \name{str.ggmatrix} \alias{str.ggmatrix} \title{\code{\link{ggmatrix}} structure} \arguments{ \item{object}{\code{\link{ggmatrix}} object to be viewed} \item{...}{passed on to the default \code{str} method} \item{raw}{boolean to determine if the plots should be converted to text or kept as original objects} } \description{ View the condensed version of the \code{\link{ggmatrix}} object. The attribute "class" is ALWAYS altered to "_class" to avoid recursion. } GGally/man/ggally_cor_v1_5.Rd0000644000176200001440000000362615022360455015460 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/deprecated.R \name{ggally_cor_v1_5} \alias{ggally_cor_v1_5} \title{Correlation value plot} \usage{ ggally_cor_v1_5( data, mapping, alignPercent = 0.6, method = "pearson", use = "complete.obs", corAlignPercent = NULL, corMethod = NULL, corUse = NULL, displayGrid = TRUE, ... ) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used} \item{alignPercent}{right align position of numbers. Default is 60 percent across the horizontal} \item{method}{\code{method} supplied to cor function} \item{use}{\code{use} supplied to cor function} \item{corAlignPercent}{deprecated. Use parameter \code{alignPercent}} \item{corMethod}{deprecated. Use parameter \code{method}} \item{corUse}{deprecated. Use parameter \code{use}} \item{displayGrid}{if TRUE, display aligned panel gridlines} \item{...}{other arguments being supplied to geom_text} } \description{ \ifelse{html}{\href{https://lifecycle.r-lib.org/articles/stages.html#deprecated}{\figure{lifecycle-deprecated.svg}{options: alt='[Deprecated]'}}}{\strong{[Deprecated]}} Estimate correlation from the given data. This function is deprecated and will be removed in future releases. See \code{\link{ggally_cor}}. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) p_(ggally_cor_v1_5(tips, mapping = ggplot2::aes(total_bill, tip))) # display with no grid p_(ggally_cor_v1_5( tips, mapping = ggplot2::aes(total_bill, tip), displayGrid = FALSE )) # change text attributes p_(ggally_cor_v1_5( tips, mapping = ggplot2::aes(x = total_bill, y = tip), size = 15, colour = I("red") )) # split by a variable p_(ggally_cor_v1_5( tips, mapping = ggplot2::aes(total_bill, tip, color = sex), size = 5 )) } \seealso{ \code{\link{ggally_cor}} } \author{ Barret Schloerke } \keyword{internal} GGally/man/GGally-package.Rd0000644000176200001440000000342615023101257015244 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/GGally-package.R \docType{package} \name{GGally-package} \alias{GGally} \alias{GGally-package} \title{GGally: Extension to 'ggplot2'} \description{ The R package 'ggplot2' is a plotting system based on the grammar of graphics. 'GGally' extends 'ggplot2' by adding several functions to reduce the complexity of combining geometric objects with transformed data. Some of these functions include a pairwise plot matrix, a two group pairwise plot matrix, a parallel coordinates plot, a survival plot, and several functions to plot networks. } \seealso{ Useful links: \itemize{ \item \url{https://ggobi.github.io/ggally/} \item \url{https://github.com/ggobi/ggally} \item Report bugs at \url{https://github.com/ggobi/ggally/issues} } } \author{ \strong{Maintainer}: Barret Schloerke \email{schloerke@gmail.com} (\href{https://orcid.org/0000-0001-9986-114X}{ORCID}) Authors: \itemize{ \item Di Cook \email{dicook@monash.edu} (\href{https://orcid.org/0000-0002-3813-7155}{ORCID}) [thesis advisor] \item Joseph Larmarange \email{joseph@larmarange.net} (\href{https://orcid.org/0000-0001-7097-700X}{ORCID}) \item Francois Briatte \email{f.briatte@gmail.com} \item Moritz Marbach \email{mmarbach@mail.uni-mannheim.de} \item Edwin Thoen \email{edwinthoen@gmail.com} \item Amos Elberg \email{amos.elberg@gmail.com} \item Jason Crowley \email{crowley.jason.s@gmail.com} } Other contributors: \itemize{ \item Ott Toomet \email{otoomet@gmail.com} [contributor] \item Heike Hofmann \email{hhofmann4@unl.edu} (\href{https://orcid.org/0000-0001-6216-5183}{ORCID}) [thesis advisor] \item Hadley Wickham \email{h.wickham@gmail.com} (\href{https://orcid.org/0000-0003-4757-117X}{ORCID}) [thesis advisor] } } \keyword{internal} GGally/man/ggally_nostic_hat.Rd0000644000176200001440000000365013764714663016212 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggnostic.R \name{ggally_nostic_hat} \alias{ggally_nostic_hat} \title{\code{\link{ggnostic}} leverage points} \usage{ ggally_nostic_hat( data, mapping, ..., linePosition = 2 * sum(eval_data_col(data, mapping$y))/nrow(data), lineColor = brew_colors("grey"), lineSize = 0.5, lineAlpha = 1, lineType = 2, avgLinePosition = sum(eval_data_col(data, mapping$y))/nrow(data), avgLineColor = brew_colors("grey"), avgLineSize = lineSize, avgLineAlpha = lineAlpha, avgLineType = 1 ) } \arguments{ \item{data, mapping, ...}{supplied directly to \code{\link{ggally_nostic_line}}} \item{linePosition, lineColor, lineSize, lineAlpha, lineType}{parameters supplied to \code{\link[ggplot2:geom_path]{ggplot2::geom_line()}} for the cutoff line} \item{avgLinePosition, avgLineColor, avgLineSize, avgLineAlpha, avgLineType}{parameters supplied to \code{\link[ggplot2:geom_path]{ggplot2::geom_line()}} for the average line} } \value{ \pkg{ggplot2} plot object } \description{ A function to display stats::influence's hat information against a given explanatory variable. } \details{ As stated in \code{\link[stats:lm.influence]{stats::influence()}} documentation: hat: a vector containing the diagonal of the 'hat' matrix. The diagonal elements of the 'hat' matrix describe the influence each response value has on the fitted value for that same observation. A suggested "cutoff" line is added to the plot at a height of 2 * p / n and an expected line at a height of p / n. If either \code{linePosition} or \code{avgLinePosition} is \code{NULL}, the respective line will not be drawn. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive dt <- broomify(stats::lm(mpg ~ wt + qsec + am, data = mtcars)) p_(ggally_nostic_hat(dt, ggplot2::aes(wt, .hat))) } \seealso{ \code{\link[stats:lm.influence]{stats::influence()}} } GGally/man/broomify.Rd0000644000176200001440000000167315022037246014331 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggnostic.R \name{broomify} \alias{broomify} \title{Broomify a model} \usage{ broomify(model, lmStars = TRUE) } \arguments{ \item{model}{model to be sent to \code{\link[broom:reexports]{broom::augment()}}, \code{\link[broom:reexports]{broom::glance()}}, and \code{\link[broom:reexports]{broom::tidy()}}} \item{lmStars}{boolean that determines if stars are added to labels} } \value{ broom::augmented data frame with the broom::glance data.frame and broom::tidy data.frame as 'broom_glance' and 'broom_tidy' attributes respectively. \code{var_x} and \code{var_y} variables are also added as attributes } \description{ broom::augment a model and add broom::glance and broom::tidy output as attributes. X and Y variables are also added. } \examples{ data(mtcars) model <- stats::lm(mpg ~ wt + qsec + am, data = mtcars) broomified_model <- broomify(model) str(broomified_model) } GGally/man/glyphs.Rd0000644000176200001440000000351214527265752014021 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gglyph.R \name{glyphs} \alias{glyphs} \title{Create \code{\link{glyphplot}} data} \usage{ glyphs( data, x_major, x_minor, y_major, y_minor, polar = FALSE, height = ggplot2::rel(0.95), width = ggplot2::rel(0.95), y_scale = identity, x_scale = identity ) } \arguments{ \item{data}{A data frame containing variables named in \code{x_major}, \code{x_minor}, \code{y_major} and \code{y_minor}.} \item{x_major, x_minor, y_major, y_minor}{The name of the variable (as a string) for the major and minor x and y axes. Together, each unique} \item{polar}{A logical of length 1, specifying whether the glyphs should be drawn in polar coordinates. Defaults to \code{FALSE}.} \item{height, width}{The height and width of each glyph. Defaults to 95\% of the \code{\link[ggplot2]{resolution}} of the data. Specify the width absolutely by supplying a numeric vector of length 1, or relative to the} \item{y_scale, x_scale}{The scaling function to be applied to each set of minor values within a grid cell. Defaults to \code{\link{identity}} so that no scaling is performed.} } \description{ Create the data needed to generate a glyph plot. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(nasa) nasaLate <- nasa[ nasa$date >= as.POSIXct("1998-01-01") & nasa$lat >= 20 & nasa$lat <= 40 & nasa$long >= -80 & nasa$long <= -60, ] temp.gly <- glyphs(nasaLate, "long", "day", "lat", "surftemp", height = 2.5) p_(ggplot2::ggplot(temp.gly, ggplot2::aes(gx, gy, group = gid)) + add_ref_lines(temp.gly, color = "grey90") + add_ref_boxes(temp.gly, color = "grey90") + ggplot2::geom_path() + ggplot2::theme_bw() + ggplot2::labs(x = "", y = "")) } \author{ Di Cook, Heike Hofmann, Hadley Wickham } GGally/man/fn_switch.Rd0000644000176200001440000000234113665760216014473 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggnostic.R \name{fn_switch} \alias{fn_switch} \title{Function switch} \usage{ fn_switch(types, mapping_val = "y") } \arguments{ \item{types}{list of functions that follow the \code{\link{ggmatrix}} function standard: \code{function(data, mapping, ...){ #make ggplot2 object }}. One key should be a 'default' key for a default switch case.} \item{mapping_val}{mapping value to switch on. Defaults to the 'y' variable of the aesthetics list.} } \description{ Function that allows you to call different functions based upon an aesthetic variable value. } \examples{ ggnostic_continuous_fn <- fn_switch(list( default = ggally_points, .fitted = ggally_points, .se.fit = ggally_nostic_se_fit, .resid = ggally_nostic_resid, .hat = ggally_nostic_hat, .sigma = ggally_nostic_sigma, .cooksd = ggally_nostic_cooksd, .std.resid = ggally_nostic_std_resid )) ggnostic_combo_fn <- fn_switch(list( default = ggally_box_no_facet, fitted = ggally_box_no_facet, .se.fit = ggally_nostic_se_fit, .resid = ggally_nostic_resid, .hat = ggally_nostic_hat, .sigma = ggally_nostic_sigma, .cooksd = ggally_nostic_cooksd, .std.resid = ggally_nostic_std_resid )) } GGally/man/ggally_count.Rd0000644000176200001440000000270714526730006015173 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \docType{data} \name{ggally_count} \alias{ggally_count} \alias{stat_ggally_count} \alias{StatGGallyCount} \alias{ggally_countDiag} \title{Display counts of observations} \usage{ ggally_count(data, mapping, ...) ggally_countDiag(data, mapping, ...) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used} \item{...}{other arguments passed to \code{\link[ggplot2]{geom_tile}(...)}} } \description{ Plot the number of observations by using rectangles with proportional areas. } \details{ You can adjust the size of rectangles with the \code{x.width} argument. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) p_(ggally_count(tips, mapping = ggplot2::aes(x = smoker, y = sex))) p_(ggally_count(tips, mapping = ggplot2::aes(x = smoker, y = sex, fill = day))) p_(ggally_count( as.data.frame(Titanic), mapping = ggplot2::aes(x = Class, y = Survived, weight = Freq) )) p_(ggally_count( as.data.frame(Titanic), mapping = ggplot2::aes(x = Class, y = Survived, weight = Freq), x.width = 0.5 )) # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive p_(ggally_countDiag(tips, mapping = ggplot2::aes(x = smoker))) p_(ggally_countDiag(tips, mapping = ggplot2::aes(x = smoker, fill = sex))) } \author{ Joseph Larmarange } \keyword{datasets} \keyword{hplot} GGally/man/ggpairs.Rd0000644000176200001440000002410015022036102014113 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggpairs.R \name{ggpairs} \alias{ggpairs} \title{ggplot2 generalized pairs plot} \usage{ ggpairs( data, mapping = NULL, columns = 1:ncol(data), title = NULL, upper = list(continuous = "cor", combo = "box_no_facet", discrete = "count", na = "na"), lower = list(continuous = "points", combo = "facethist", discrete = "facetbar", na = "na"), diag = list(continuous = "densityDiag", discrete = "barDiag", na = "naDiag"), params = deprecated(), ..., xlab = NULL, ylab = NULL, axisLabels = c("show", "internal", "none"), columnLabels = colnames(data[columns]), labeller = "label_value", switch = NULL, showStrips = NULL, legend = NULL, cardinality_threshold = 15, progress = NULL, proportions = NULL, legends = deprecated() ) } \arguments{ \item{data}{data set using. Can have both numerical and categorical data.} \item{mapping}{aesthetic mapping (besides \code{x} and \code{y}). See \code{\link[ggplot2]{aes}()}. If \code{mapping} is numeric, \code{columns} will be set to the \code{mapping} value and \code{mapping} will be set to \code{NULL}.} \item{columns}{which columns are used to make plots. Defaults to all columns.} \item{title, xlab, ylab}{title, x label, and y label for the graph} \item{upper}{see Details} \item{lower}{see Details} \item{diag}{see Details} \item{params}{\ifelse{html}{\href{https://lifecycle.r-lib.org/articles/stages.html#deprecated}{\figure{lifecycle-deprecated.svg}{options: alt='[Deprecated]'}}}{\strong{[Deprecated]}} see \code{\link{wrap_fn_with_param_arg}}} \item{...}{\ifelse{html}{\href{https://lifecycle.r-lib.org/articles/stages.html#deprecated}{\figure{lifecycle-deprecated.svg}{options: alt='[Deprecated]'}}}{\strong{[Deprecated]}} use \code{mapping}} \item{axisLabels}{either "show" to display axisLabels, "internal" for labels in the diagonal plots, or "none" for no axis labels} \item{columnLabels}{label names to be displayed. Defaults to names of columns being used.} \item{labeller}{labeller for facets. See \code{\link[ggplot2]{labellers}}. Common values are \code{"label_value"} (default) and \code{"label_parsed"}.} \item{switch}{switch parameter for facet_grid. See \code{ggplot2::\link[ggplot2]{facet_grid}}. By default, the labels are displayed on the top and right of the plot. If \code{"x"}, the top labels will be displayed to the bottom. If \code{"y"}, the right-hand side labels will be displayed to the left. Can also be set to \code{"both"}} \item{showStrips}{boolean to determine if each plot's strips should be displayed. \code{NULL} will default to the top and right side plots only. \code{TRUE} or \code{FALSE} will turn all strips on or off respectively.} \item{legend}{May be the two objects described below or the default \code{NULL} value. The legend position can be moved by using ggplot2's theme element \code{pm + theme(legend.position = "bottom")} \describe{\item{a numeric vector of length 2}{provides the location of the plot to use the legend for the plot matrix's legend. Such as \code{legend = c(3,5)} which will use the legend from the plot in the third row and fifth column}\item{a single numeric value}{provides the location of a plot according to the display order. Such as \code{legend = 3} in a plot matrix with 2 rows and 5 columns displayed by column will return the plot in position \code{c(1,2)}}\item{a object from \code{\link{grab_legend}()}}{a predetermined plot legend that will be displayed directly}}} \item{cardinality_threshold}{maximum number of levels allowed in a character / factor column. Set this value to NULL to not check factor columns. Defaults to 15} \item{progress}{\code{NULL} (default) for a progress bar in interactive sessions with more than 15 plots, \code{TRUE} for a progress bar, \code{FALSE} for no progress bar, or a function that accepts at least a plot matrix and returns a new \code{progress::\link[progress]{progress_bar}}. See \code{\link{ggmatrix_progress}}.} \item{proportions}{Value to change how much area is given for each plot. Either \code{NULL} (default), numeric value matching respective length, \code{grid::\link[grid]{unit}} object with matching respective length or \code{"auto"} for automatic relative proportions based on the number of levels for categorical variables.} \item{legends}{\ifelse{html}{\href{https://lifecycle.r-lib.org/articles/stages.html#deprecated}{\figure{lifecycle-deprecated.svg}{options: alt='[Deprecated]'}}}{\strong{[Deprecated]}}} } \value{ \code{\link{ggmatrix}} object that if called, will print } \description{ Make a matrix of plots with a given data set } \details{ \code{upper} and \code{lower} are lists that may contain the variables 'continuous', 'combo', 'discrete', and 'na'. Each element of the list may be a function or a string. If a string is supplied, it must be a character string representing the tail end of a \code{ggally_NAME} function. The list of current valid \code{ggally_NAME} functions is visible in a dedicated vignette. \describe{ \item{continuous}{This option is used for continuous X and Y data.} \item{combo}{This option is used for either continuous X and categorical Y data or categorical X and continuous Y data.} \item{discrete}{This option is used for categorical X and Y data.} \item{na}{This option is used when all X data is \code{NA}, all Y data is \code{NA}, or either all X or Y data is \code{NA}.} } \code{diag} is a list that may only contain the variables 'continuous', 'discrete', and 'na'. Each element of the diag list is a string implementing the following options: \describe{ \item{continuous}{exactly one of ('densityDiag', 'barDiag', 'blankDiag'). This option is used for continuous X data.} \item{discrete}{exactly one of ('barDiag', 'blankDiag'). This option is used for categorical X and Y data.} \item{na}{exactly one of ('naDiag', 'blankDiag'). This option is used when all X data is \code{NA}.} } If 'blank' is ever chosen as an option, then ggpairs will produce an empty plot. If a function is supplied as an option to \code{upper}, \code{lower}, or \code{diag}, it should implement the function api of \code{function(data, mapping, ...){#make ggplot2 plot}}. If a specific function needs its parameters set, \code{\link{wrap}(fn, param1 = val1, param2 = val2)} the function with its parameters. } \examples{ # small function to display plots only if it's interactive p_ <- GGally::print_if_interactive ## Quick example, with and without colour data(flea) ggpairs(flea, columns = 2:4) pm <- ggpairs(flea, columns = 2:4, ggplot2::aes(colour = species)) p_(pm) # Note: colour should be categorical, else you will need to reset # the upper triangle to use points instead of trying to compute corr data(tips) pm <- ggpairs(tips[, 1:3]) p_(pm) pm <- ggpairs(tips, 1:3, columnLabels = c("Total Bill", "Tip", "Sex")) p_(pm) pm <- ggpairs(tips, upper = "blank") p_(pm) ## Plot Types # Change default plot behavior pm <- ggpairs( tips[, c(1, 3, 4, 2)], upper = list(continuous = "density", combo = "box_no_facet"), lower = list(continuous = "points", combo = "dot_no_facet") ) p_(pm) # Supply Raw Functions (may be user defined functions!) pm <- ggpairs( tips[, c(1, 3, 4, 2)], upper = list(continuous = ggally_density, combo = ggally_box_no_facet), lower = list(continuous = ggally_points, combo = ggally_dot_no_facet) ) p_(pm) # Use sample of the diamonds data data(diamonds, package = "ggplot2") diamonds.samp <- diamonds[sample(1:dim(diamonds)[1], 1000), ] # Different aesthetics for different plot sections and plot types pm <- ggpairs( diamonds.samp[, 1:5], mapping = ggplot2::aes(color = cut), upper = list(continuous = wrap("density", alpha = 0.5), combo = "box_no_facet"), lower = list(continuous = wrap("points", alpha = 0.3), combo = wrap("dot_no_facet", alpha = 0.4)), title = "Diamonds" ) p_(pm) ## Axis Label Variations # Only Variable Labels on the diagonal (no axis labels) pm <- ggpairs(tips[, 1:3], axisLabels = "internal") p_(pm) # Only Variable Labels on the outside (no axis labels) pm <- ggpairs(tips[, 1:3], axisLabels = "none") p_(pm) ## Facet Label Variations # Default: df_x <- rnorm(100) df_y <- df_x + rnorm(100, 0, 0.1) df <- data.frame(x = df_x, y = df_y, c = sqrt(df_x^2 + df_y^2)) pm <- ggpairs( df, columnLabels = c("alpha[foo]", "alpha[bar]", "sqrt(alpha[foo]^2 + alpha[bar]^2)") ) p_(pm) # Parsed labels: pm <- ggpairs( df, columnLabels = c("alpha[foo]", "alpha[bar]", "sqrt(alpha[foo]^2 + alpha[bar]^2)"), labeller = "label_parsed" ) p_(pm) ## Plot Insertion Example custom_car <- ggpairs(mtcars[, c("mpg", "wt", "cyl")], upper = "blank", title = "Custom Example") # ggplot example taken from example(geom_text) plot <- ggplot2::ggplot(mtcars, ggplot2::aes(x = wt, y = mpg, label = rownames(mtcars))) plot <- plot + ggplot2::geom_text(ggplot2::aes(colour = factor(cyl)), size = 3) + ggplot2::scale_colour_discrete(l = 40) custom_car[1, 2] <- plot personal_plot <- ggally_text( "ggpairs allows you\nto put in your\nown plot.\nLike that one.\n <---" ) custom_car[1, 3] <- personal_plot p_(custom_car) ## Remove binwidth warning from ggplot2 # displays warning about picking a better binwidth pm <- ggpairs(tips, 2:3) p_(pm) # no warning displayed pm <- ggpairs(tips, 2:3, lower = list(combo = wrap("facethist", binwidth = 0.5))) p_(pm) # no warning displayed with user supplied function pm <- ggpairs(tips, 2:3, lower = list(combo = wrap(ggally_facethist, binwidth = 0.5))) p_(pm) ## Remove panel grid lines from correlation plots pm <- ggpairs( flea, columns = 2:4, upper = list(continuous = wrap(ggally_cor, displayGrid = FALSE)) ) p_(pm) ## Custom with/height of subplots pm <- ggpairs(tips, columns = c(2, 3, 5)) p_(pm) pm <- ggpairs(tips, columns = c(2, 3, 5), proportions = "auto") p_(pm) pm <- ggpairs(tips, columns = c(2, 3, 5), proportions = c(1, 3, 2)) p_(pm) } \references{ John W Emerson, Walton A Green, Barret Schloerke, Jason Crowley, Dianne Cook, Heike Hofmann, Hadley Wickham. The Generalized Pairs Plot. Journal of Computational and Graphical Statistics, vol. 22, no. 1, pp. 79-91, 2012. } \seealso{ wrap v1_ggmatrix_theme } \author{ Barret Schloerke, Jason Crowley, Di Cook, Heike Hofmann, Hadley Wickham } \keyword{hplot} GGally/man/is_date.Rd0000644000176200001440000000041513663637143014117 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/find-combo.R \name{is_date} \alias{is_date} \title{Check if object is a date} \usage{ is_date(x) } \arguments{ \item{x}{vector} } \description{ Check if object is a date } \keyword{internal} GGally/man/flea.Rd0000644000176200001440000000174713761572054013425 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/data-flea.R \docType{data} \name{flea} \alias{flea} \title{Historical data used for classification examples.} \format{ A data frame with 74 rows and 7 variables } \usage{ data(flea) } \description{ This data contains physical measurements on three species of flea beetles. } \details{ \itemize{ \item species Ch. concinna, Ch. heptapotamica, Ch. heikertingeri \item tars1 width of the first joint of the first tarsus in microns \item tars2 width of the second joint of the first tarsus in microns \item head the maximal width of the head between the external edges of the eyes in 0.01 mm \item aede1 the maximal width of the aedeagus in the fore-part in microns \item aede2 the front angle of the aedeagus (1 unit = 7.5 degrees) \item aede3 the aedeagus width from the side in microns } } \references{ Lubischew, A. A. (1962), On the Use of Discriminant Functions in Taxonomy, Biometrics 18:455-477. } \keyword{datasets} GGally/man/remove_color_unless_equal.Rd0000644000176200001440000000131213664365623017761 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{remove_color_unless_equal} \alias{remove_color_unless_equal} \title{Remove colour mapping unless found in select mapping keys} \usage{ remove_color_unless_equal(mapping, to = c("x", "y")) } \arguments{ \item{mapping}{output of \code{ggplot2::\link[ggplot2]{aes}(...)}} \item{to}{set of mapping keys to check} } \value{ Aes mapping with colour mapping kept only if found in selected mapping keys. } \description{ Remove colour mapping unless found in select mapping keys } \examples{ mapping <- aes(x = sex, y = age, colour = sex) mapping <- aes(x = sex, y = age, colour = region) remove_color_unless_equal(mapping) } GGally/man/ggally_table.Rd0000644000176200001440000000437414527265752015150 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggally_cross.R \name{ggally_table} \alias{ggally_table} \alias{ggally_tableDiag} \title{Display a table of the number of observations} \usage{ ggally_table( data, mapping, keep.zero.cells = FALSE, ..., geom_tile_args = NULL ) ggally_tableDiag( data, mapping, keep.zero.cells = FALSE, ..., geom_tile_args = NULL ) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used} \item{keep.zero.cells}{If \code{TRUE}, display cells with no observation.} \item{...}{other arguments passed to \code{\link[ggplot2]{geom_text}(...)}} \item{geom_tile_args}{other arguments passed to \code{\link[ggplot2]{geom_tile}(...)}} } \description{ Plot the number of observations as a table. Other statistics computed by \code{\link{stat_cross}} could be used (see examples). } \note{ The \strong{colour} aesthetic is taken into account only if equal to \strong{x} or \strong{y}. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) p_(ggally_table(tips, mapping = aes(x = smoker, y = sex))) p_(ggally_table(tips, mapping = aes(x = day, y = time))) p_(ggally_table(tips, mapping = aes(x = smoker, y = sex, colour = smoker))) # colour is kept only if equal to x or y p_(ggally_table(tips, mapping = aes(x = smoker, y = sex, colour = day))) # diagonal version p_(ggally_tableDiag(tips, mapping = aes(x = smoker))) # custom label size and color p_(ggally_table(tips, mapping = aes(x = smoker, y = sex), size = 16, color = "red")) # display column proportions p_(ggally_table( tips, mapping = aes(x = day, y = sex, label = scales::percent(after_stat(col.prop))) )) # draw table cells p_(ggally_table( tips, mapping = aes(x = smoker, y = sex), geom_tile_args = list(colour = "black", fill = "white") )) # Use standardized residuals to fill table cells p_(ggally_table( as.data.frame(Titanic), mapping = aes( x = Class, y = Survived, weight = Freq, fill = after_stat(std.resid), label = scales::percent(after_stat(col.prop), accuracy = .1) ), geom_tile_args = list(colour = "black") ) + scale_fill_steps2(breaks = c(-3, -2, 2, 3), show.limits = TRUE)) } \author{ Joseph Larmarange } \keyword{hplot} GGally/man/ggally_text.Rd0000644000176200001440000000201214527265752015030 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{ggally_text} \alias{ggally_text} \title{Text plot} \usage{ ggally_text( label, mapping = ggplot2::aes(color = I("black")), xP = 0.5, yP = 0.5, xrange = c(0, 1), yrange = c(0, 1), ... ) } \arguments{ \item{label}{text that you want to appear} \item{mapping}{aesthetics that don't relate to position (such as color)} \item{xP}{horizontal position percentage} \item{yP}{vertical position percentage} \item{xrange}{range of the data around it. Only nice to have if plotting in a matrix} \item{yrange}{range of the data around it. Only nice to have if plotting in a matrix} \item{...}{other arguments for geom_text} } \description{ Plot text for a plot. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive p_(ggally_text("Example 1")) p_(ggally_text("Example\nTwo", mapping = ggplot2::aes(size = 15), color = I("red"))) } \author{ Barret Schloerke } \keyword{hplot} GGally/man/ggally_colbar.Rd0000644000176200001440000000473414527265752015323 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggally_colbar.R \name{ggally_colbar} \alias{ggally_colbar} \alias{ggally_rowbar} \title{Column and row bar plots} \usage{ ggally_colbar( data, mapping, label_format = scales::label_percent(accuracy = 0.1), ..., remove_background = FALSE, remove_percentage_axis = FALSE, reverse_fill_levels = FALSE, geom_bar_args = NULL ) ggally_rowbar( data, mapping, label_format = scales::label_percent(accuracy = 0.1), ..., remove_background = FALSE, remove_percentage_axis = FALSE, reverse_fill_levels = TRUE, geom_bar_args = NULL ) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used} \item{label_format}{formatter function for displaying proportions, not taken into account if a label aesthetic is provided in \code{mapping}} \item{...}{other arguments passed to \code{\link[ggplot2]{geom_text}(...)}} \item{remove_background}{should the \code{panel.background} be removed?} \item{remove_percentage_axis}{should percentage axis be removed? Removes the y-axis for \code{ggally_colbar()} and x-axis for \code{ggally_rowbar()}} \item{reverse_fill_levels}{should the levels of the fill variable be reversed?} \item{geom_bar_args}{other arguments passed to \code{\link[ggplot2]{geom_bar}(...)}} } \description{ Plot column or row percentage using bar plots. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) p_(ggally_colbar(tips, mapping = aes(x = smoker, y = sex))) p_(ggally_rowbar(tips, mapping = aes(x = smoker, y = sex))) # change labels' size p_(ggally_colbar(tips, mapping = aes(x = smoker, y = sex), size = 8)) # change labels' colour and use bold p_(ggally_colbar(tips, mapping = aes(x = smoker, y = sex), colour = "white", fontface = "bold" )) # display number of observations instead of proportions p_(ggally_colbar(tips, mapping = aes(x = smoker, y = sex, label = after_stat(count)))) # custom bar width p_(ggally_colbar(tips, mapping = aes(x = smoker, y = sex), geom_bar_args = list(width = .5))) # change format of labels p_(ggally_colbar(tips, mapping = aes(x = smoker, y = sex), label_format = scales::label_percent(accuracy = .01, decimal.mark = ",") )) p_(ggduo( data = as.data.frame(Titanic), mapping = aes(weight = Freq), columnsX = "Survived", columnsY = c("Sex", "Class", "Age"), types = list(discrete = "rowbar"), legend = 1 )) } \author{ Joseph Larmarange } \keyword{hplot} GGally/man/happy.Rd0000644000176200001440000000334613761572054013634 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/data-happy.R \docType{data} \name{happy} \alias{happy} \title{Data related to happiness from the General Social Survey, 1972-2006.} \format{ A data frame with 51020 rows and 10 variables } \usage{ data(happy) } \description{ This data extract is taken from Hadley Wickham's \code{productplots} package. The original description follows, with minor edits. } \details{ The data is a small sample of variables related to happiness from the General Social Survey (GSS). The GSS is a yearly cross-sectional survey of Americans, run from 1972. We combine data for 25 years to yield 51,020 observations, and of the over 5,000 variables, we select nine related to happiness: \itemize{ \item age. age in years: 18--89. \item degree. highest education: lt high school, high school, junior college, bachelor, graduate. \item finrela. relative financial status: far above, above average, average, below average, far below. \item happy. happiness: very happy, pretty happy, not too happy. \item health. health: excellent, good, fair, poor. \item marital. marital status: married, never married, divorced, widowed, separated. \item sex. sex: female, male. \item wtsall. probability weight. 0.43--6.43. } } \references{ Smith, Tom W., Peter V. Marsden, Michael Hout, Jibum Kim. \emph{General Social Surveys, 1972-2006}. [machine-readable data file]. Principal Investigator, Tom W. Smith; Co-Principal Investigators, Peter V. Marsden and Michael Hout, NORC ed. Chicago: National Opinion Research Center, producer, 2005; Storrs, CT: The Roper Center for Public Opinion Research, University of Connecticut, distributor. 1 data file (57,061 logical records) and 1 codebook (3,422 pp). } \keyword{datasets} GGally/man/glyphplot.Rd0000644000176200001440000000211314330752755014525 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gglyph.R \name{glyphplot} \alias{glyphplot} \alias{is.glyphplot} \alias{[.glyphplot} \alias{print.glyphplot} \title{Glyph plot class} \usage{ glyphplot(data, width, height, polar, x_major, y_major) is.glyphplot(x) \method{[}{glyphplot}(x, ...) \method{print}{glyphplot}(x, ...) } \arguments{ \item{data}{A data frame containing variables named in \code{x_major}, \code{x_minor}, \code{y_major} and \code{y_minor}.} \item{height, width}{The height and width of each glyph. Defaults to 95\% of the \code{\link[ggplot2]{resolution}} of the data. Specify the width absolutely by supplying a numeric vector of length 1, or relative to the} \item{polar}{A logical of length 1, specifying whether the glyphs should be drawn in polar coordinates. Defaults to \code{FALSE}.} \item{x_major, y_major}{The name of the variable (as a string) for the major x and y axes. Together, the} \item{x}{glyphplot to be printed} \item{...}{ignored} } \description{ Glyph plot class } \author{ Di Cook, Heike Hofmann, Hadley Wickham } GGally/man/column_is_character.Rd0000644000176200001440000000105313761572054016510 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggparcoord.R \name{column_is_character} \alias{column_is_character} \alias{column_is_factor} \title{Get vector of variable types from data frame} \usage{ column_is_character(df) column_is_factor(df) } \arguments{ \item{df}{data frame to extract variable types from} } \value{ character vector with variable types, with names corresponding to the variable names from df } \description{ Get vector of variable types from data frame } \author{ Jason Crowley } \keyword{internal} GGally/man/print_if_interactive.Rd0000644000176200001440000000053013665760216016714 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/utils.R \name{print_if_interactive} \alias{print_if_interactive} \title{Print if not CRAN} \usage{ print_if_interactive(p) } \arguments{ \item{p}{plot to be displayed} } \description{ Small function to print a plot if the R session is interactive or in a CI build } GGally/man/ggally_facetdensitystrip.Rd0000644000176200001440000000133013665760216017607 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{ggally_facetdensitystrip} \alias{ggally_facetdensitystrip} \title{Density or tiles plot with facets} \usage{ ggally_facetdensitystrip(data, mapping, ..., den_strip = FALSE) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used} \item{...}{other arguments being sent to either geom_histogram or stat_density} \item{den_strip}{boolean to decide whether or not to plot a density strip(TRUE) or a facet density(FALSE) plot.} } \description{ Make tile plot or density plot as compact as possible. } \examples{ example(ggally_facetdensity) example(ggally_denstrip) } \author{ Barret Schloerke } \keyword{hplot} GGally/man/ggally_crosstable.Rd0000644000176200001440000000372014526730006016200 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggally_cross.R \name{ggally_crosstable} \alias{ggally_crosstable} \title{Display a cross-tabulated table} \usage{ ggally_crosstable( data, mapping, cells = c("observed", "prop", "row.prop", "col.prop", "expected", "resid", "std.resid"), fill = c("none", "std.resid", "resid"), ..., geom_tile_args = list(colour = "grey50") ) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used} \item{cells}{Which statistic should be displayed in table cells?} \item{fill}{Which statistic should be used for filling table cells?} \item{...}{other arguments passed to \code{\link[ggplot2]{geom_text}(...)}} \item{geom_tile_args}{other arguments passed to \code{\link[ggplot2]{geom_tile}(...)}} } \description{ \code{ggally_crosstable} is a variation of \code{\link{ggally_table}} with few modifications: (i) table cells are drawn; (ii) x and y axis are not expanded (and therefore are not aligned with other \code{ggally_*} plots); (iii) content and fill of cells can be easily controlled with dedicated arguments. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) # differences with ggally_table() p_(ggally_table(tips, mapping = aes(x = day, y = time))) p_(ggally_crosstable(tips, mapping = aes(x = day, y = time))) # display column proportions p_(ggally_crosstable(tips, mapping = aes(x = day, y = sex), cells = "col.prop")) # display row proportions p_(ggally_crosstable(tips, mapping = aes(x = day, y = sex), cells = "row.prop")) # change size of text p_(ggally_crosstable(tips, mapping = aes(x = day, y = sex), size = 8)) # fill cells with standardized residuals p_(ggally_crosstable(tips, mapping = aes(x = day, y = sex), fill = "std.resid")) # change scale for fill p_(ggally_crosstable(tips, mapping = aes(x = day, y = sex), fill = "std.resid") + scale_fill_steps2(breaks = c(-2, 0, 2), show.limits = TRUE)) } GGally/man/ggally_nostic_cooksd.Rd0000644000176200001440000000254614527407231016707 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggnostic.R \name{ggally_nostic_cooksd} \alias{ggally_nostic_cooksd} \title{\code{\link{ggnostic}} Cook's distance} \usage{ ggally_nostic_cooksd( data, mapping, ..., linePosition = pf(0.5, length(attr(data, "var_x")), nrow(data) - length(attr(data, "var_x"))), lineColor = brew_colors("grey"), lineType = 2 ) } \arguments{ \item{data, mapping, ..., lineColor, lineType}{parameters supplied to \code{\link{ggally_nostic_line}}} \item{linePosition}{4 / n is the general cutoff point for Cook's Distance} } \value{ \pkg{ggplot2} plot object } \description{ A function to display \code{\link[stats:influence.measures]{stats::cooks.distance()}}. } \details{ A line is added at \eqn{F_{p,n-p}(0.5)}{F[p,n-p](0.5)} to display the general cutoff point for Cook's Distance. Reference: Michael H. Kutner, Christopher J. Nachtsheim, John Neter, and William Li. Applied linear statistical models. The McGraw-Hill / Irwin series operations and decision sciences. McGraw-Hill Irwin, 2005, p. 403 } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive dt <- broomify(stats::lm(mpg ~ wt + qsec + am, data = mtcars)) p_(ggally_nostic_cooksd(dt, ggplot2::aes(wt, .cooksd))) } \seealso{ \code{\link[stats:influence.measures]{stats::cooks.distance()}} } GGally/man/twitter_spambots.Rd0000644000176200001440000000154613761572054016125 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/data-twitter_spambots.R \docType{data} \name{twitter_spambots} \alias{twitter_spambots} \title{Twitter spambots} \format{ An object of class \code{network} with 120 edges and 94 vertices. } \usage{ data(twitter_spambots) } \description{ A network of spambots found on Twitter as part of a data mining project. } \details{ Each node of the network is identified by the Twitter screen name of the account and further carries five vertex attributes: \itemize{ \item location user's location, as provided by the user \item lat latitude, based on the user's location \item lon longitude, based on the user's location \item followers number of Twitter accounts that follow this account \item friends number of Twitter accounts followed by the account } } \author{ Amos Elberg } \keyword{datasets} GGally/man/model_terms.Rd0000644000176200001440000000154713663637143015030 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggnostic.R \name{model_response_variables} \alias{model_response_variables} \alias{model_beta_variables} \alias{model_beta_label} \title{Model term names} \usage{ model_response_variables(model, data = broom::augment(model)) model_beta_variables(model, data = broom::augment(model)) model_beta_label(model, data = broom::augment(model), lmStars = TRUE) } \arguments{ \item{model}{model in question} \item{data}{equivalent to \code{broom::augment(model)}} \item{lmStars}{boolean that determines if stars are added to labels} } \value{ character vector of names } \description{ Retrieve either the response variable names, the beta variable names, or beta variable names. If the model is an object of class 'lm', by default, the beta variable names will include anova significance stars. } GGally/man/ggbivariate.Rd0000644000176200001440000000422714526730006014767 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggbivariate.R \name{ggbivariate} \alias{ggbivariate} \title{Display an outcome using several potential explanatory variables} \usage{ ggbivariate( data, outcome, explanatory = NULL, mapping = NULL, types = NULL, ..., rowbar_args = NULL ) } \arguments{ \item{data}{dataset to be used, can have both categorical and numerical variables} \item{outcome}{name or position of the outcome variable (one variable only)} \item{explanatory}{names or positions of the explanatory variables (if \code{NULL}, will take all variables other than \code{outcome})} \item{mapping}{additional aesthetic to be used, for example to indicate weights (see examples)} \item{types}{custom types of plots to use, see \code{\link{ggduo}}} \item{...}{additional arguments passed to \code{\link{ggduo}} (see examples)} \item{rowbar_args}{additional arguments passed to \code{\link{ggally_rowbar}} (see examples)} } \description{ \code{ggbivariate} is a variant of \code{\link{ggduo}} for plotting an outcome variable with several potential explanatory variables. } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) p_(ggbivariate(tips, "smoker", c("day", "time", "sex", "tip"))) # Personalize plot title and legend title p_(ggbivariate( tips, "smoker", c("day", "time", "sex", "tip"), title = "Custom title" ) + labs(fill = "Smoker ?")) # Customize fill colour scale p_(ggbivariate(tips, "smoker", c("day", "time", "sex", "tip")) + scale_fill_brewer(type = "qual")) # Customize labels p_(ggbivariate( tips, "smoker", c("day", "time", "sex", "tip"), rowbar_args = list( colour = "white", size = 4, fontface = "bold", label_format = scales::label_percent(accurary = 1) ) )) # Choose the sub-plot from which get legend p_(ggbivariate(tips, "smoker")) p_(ggbivariate(tips, "smoker", legend = 3)) # Use mapping to indicate weights d <- as.data.frame(Titanic) p_(ggbivariate(d, "Survived", mapping = aes(weight = Freq))) # outcome can be numerical p_(ggbivariate(tips, outcome = "tip", title = "tip")) } \author{ Joseph Larmarange } GGally/man/ggally_dot.Rd0000644000176200001440000000174714527265752014650 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gg-plots.R \name{ggally_dot} \alias{ggally_dot} \alias{ggally_dot_no_facet} \title{Grouped dot plot} \usage{ ggally_dot(data, mapping, ...) ggally_dot_no_facet(data, mapping, ...) } \arguments{ \item{data}{data set using} \item{mapping}{aesthetics being used} \item{...}{other arguments being supplied to geom_jitter} } \description{ Add jittering with the box plot. \code{ggally_dot_no_facet} will be a single panel plot, while \code{ggally_dot} will be a faceted plot } \examples{ # Small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) p_(ggally_dot(tips, mapping = ggplot2::aes(x = total_bill, y = sex))) p_(ggally_dot( tips, mapping = ggplot2::aes(sex, total_bill, color = sex) )) p_(ggally_dot( tips, mapping = ggplot2::aes(sex, total_bill, color = sex, shape = sex) ) + ggplot2::scale_shape(solid = FALSE)) } \author{ Barret Schloerke } \keyword{hplot} GGally/man/rescale01.Rd0000644000176200001440000000067314330752755014273 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/gglyph.R \name{rescale01} \alias{rescale01} \alias{range01} \alias{max1} \alias{mean0} \alias{min0} \alias{rescale11} \title{Rescaling functions} \usage{ range01(x) max1(x) mean0(x) min0(x) rescale01(x, xlim = NULL) rescale11(x, xlim = NULL) } \arguments{ \item{x}{numeric vector} \item{xlim}{value used in \code{range}} } \description{ Rescaling functions } GGally/man/psychademic.Rd0000644000176200001440000000172213761572054015000 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/data-psychademic.R \docType{data} \name{psychademic} \alias{psychademic} \title{UCLA canonical correlation analysis data} \format{ A data frame with 600 rows and 8 variables } \usage{ data(psychademic) } \description{ This data contains 600 observations on eight variables } \details{ \itemize{ \item locus_of_control - psychological \item self_concept - psychological \item motivation - psychological. Converted to four character groups \item read - academic \item write - academic \item math - academic \item science - academic \item female - academic. Dropped from original source \item sex - academic. Added as a character version of female column } } \references{ R Data Analysis Examples | Canonical Correlation Analysis. UCLA: Institute for Digital Research and Education. from http://www.stats.idre.ucla.edu/r/dae/canonical-correlation-analysis (accessed May 22, 2017). } \keyword{datasets} GGally/man/ggtable.Rd0000644000176200001440000000345514526730006014112 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggtable.R \name{ggtable} \alias{ggtable} \title{Cross-tabulated tables of discrete variables} \usage{ ggtable( data, columnsX = 1:ncol(data), columnsY = 1:ncol(data), cells = c("observed", "prop", "row.prop", "col.prop", "expected", "resid", "std.resid"), fill = c("none", "std.resid", "resid"), mapping = NULL, ... ) } \arguments{ \item{data}{dataset to be used, can have both categorical and numerical variables} \item{columnsX, columnsY}{names or positions of which columns are used to make plots. Defaults to all columns.} \item{cells}{Which statistic should be displayed in table cells?} \item{fill}{Which statistic should be used for filling table cells?} \item{mapping}{additional aesthetic to be used, for example to indicate weights (see examples)} \item{...}{additional arguments passed to \code{\link{ggduo}} (see examples)} } \description{ \code{ggtable} is a variant of \code{\link{ggduo}} for quick cross-tabulated tables of discrete variables. } \examples{ # small function to display plots only if it's interactive p_ <- GGally::print_if_interactive data(tips) p_(ggtable(tips, "smoker", c("day", "time", "sex"))) # displaying row proportions p_(ggtable(tips, "smoker", c("day", "time", "sex"), cells = "row.prop")) # filling cells with standardized residuals p_(ggtable(tips, "smoker", c("day", "time", "sex"), fill = "std.resid", legend = 1)) # if continuous variables are provided, just displaying some summary statistics p_(ggtable(tips, c("smoker", "total_bill"), c("day", "time", "sex", "tip"))) # specifying weights d <- as.data.frame(Titanic) p_(ggtable( d, "Survived", c("Class", "Sex", "Age"), mapping = aes(weight = Freq), cells = "row.prop", fill = "std.resid" )) } \author{ Joseph Larmarange } GGally/man/scag_order.Rd0000644000176200001440000000117413761572054014620 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggparcoord.R \name{scag_order} \alias{scag_order} \title{Find order of variables} \usage{ scag_order(scag, vars, measure) } \arguments{ \item{scag}{\code{scagnostics} object} \item{vars}{character vector of the variables to be ordered} \item{measure}{scagnostics measure to order according to} } \value{ character vector of variable ordered according to the given scagnostic measure } \description{ Find order of variables based on a specified scagnostic measure by maximizing the index values of that measure along the path. } \author{ Barret Schloerke } GGally/man/find_plot_type.Rd0000644000176200001440000000107613665760216015532 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/find-combo.R \name{find_plot_type} \alias{find_plot_type} \title{Find plot types} \usage{ find_plot_type(col1Name, col2Name, type1, type2, isAllNa, allowDiag) } \arguments{ \item{col1Name}{x column name} \item{col2Name}{y column name} \item{type1}{x column type} \item{type2}{y column type} \item{isAllNa}{is.na(data)} \item{allowDiag}{allow for diag values to be returned} } \description{ Retrieves the type of plot for the specific columns } \author{ Barret Schloerke } \keyword{internal} GGally/man/australia_PISA2012.Rd0000644000176200001440000000475115036241467015620 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/data-australia-pisa-2012.R \docType{data} \name{australia_PISA2012} \alias{australia_PISA2012} \title{Programme for International Student Assessment (PISA) 2012 Data for Australia} \format{ A data frame with 8247 rows and 32 variables } \source{ \url{https://www.oecd.org/en/data/datasets/pisa-2012-cba-database.html} } \usage{ data(australia_PISA2012) } \description{ About PISA } \details{ The Programme for International Student Assessment (PISA) is a triennial international survey which aims to evaluate education systems worldwide by testing the skills and knowledge of 15-year-old students. To date, students representing more than 70 economies have participated in the assessment. While 65 economies took part in the 2012 study, this data set only contains information from the country of Australia. \itemize{ \item gender : Factor w/ 2 levels "female","male": 1 1 2 2 2 1 1 1 2 1 ... \item age : Factor w/ 4 levels "4","5","6","7": 2 2 2 4 3 1 2 2 2 2 ... \item homework : num 5 5 9 3 2 3 4 3 5 1 ... \item desk : num 1 0 1 1 1 1 1 1 1 1 ... \item room : num 1 1 1 1 1 1 1 1 1 1 ... \item study : num 1 1 1 1 1 1 1 1 1 1 ... \item computer : num 1 1 1 1 1 1 1 1 1 1 ... \item software : num 1 1 1 1 1 1 1 1 1 1 ... \item internet : num 1 1 1 1 1 1 1 1 1 1 ... \item literature : num 0 0 1 0 1 1 1 1 1 0 ... \item poetry : num 0 0 1 0 1 1 0 1 1 1 ... \item art : num 1 0 1 0 1 1 0 1 1 1 ... \item textbook : num 1 1 1 1 1 0 1 1 1 1 ... \item dictionary : num 1 1 1 1 1 1 1 1 1 1 ... \item dishwasher : num 1 1 1 1 0 1 1 1 1 1 ... \item PV1MATH : num 562 565 602 520 613 ... \item PV2MATH : num 569 557 594 507 567 ... \item PV3MATH : num 555 553 552 501 585 ... \item PV4MATH : num 579 538 526 521 596 ... \item PV5MATH : num 548 573 619 547 603 ... \item PV1READ : num 582 617 650 554 605 ... \item PV2READ : num 571 572 608 560 557 ... \item PV3READ : num 602 560 594 517 627 ... \item PV4READ : num 572 564 575 564 597 ... \item PV5READ : num 585 565 620 572 598 ... \item PV1SCIE : num 583 627 668 574 639 ... \item PV2SCIE : num 579 600 665 612 635 ... \item PV3SCIE : num 593 574 620 571 666 ... \item PV4SCIE : num 567 582 592 598 700 ... \item PV5SCIE : num 587 625 656 662 670 ... \item SENWGT_STU : num 0.133 0.133 0.141 0.141 0.141 ... \item possessions: num 10 8 12 9 11 11 10 12 12 11 ... } } \keyword{datasets} GGally/man/ggparcoord.Rd0000644000176200001440000001713514527407231014636 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggparcoord.R \name{ggparcoord} \alias{ggparcoord} \title{Parallel coordinate plot} \usage{ ggparcoord( data, columns = 1:ncol(data), groupColumn = NULL, scale = "std", scaleSummary = "mean", centerObsID = 1, missing = "exclude", order = columns, showPoints = FALSE, splineFactor = FALSE, alphaLines = 1, boxplot = FALSE, shadeBox = NULL, mapping = NULL, title = "" ) } \arguments{ \item{data}{the dataset to plot} \item{columns}{a vector of variables (either names or indices) to be axes in the plot} \item{groupColumn}{a single variable to group (color) by} \item{scale}{method used to scale the variables (see Details)} \item{scaleSummary}{if scale=="center", summary statistic to univariately center each variable by} \item{centerObsID}{if scale=="centerObs", row number of case plot should univariately be centered on} \item{missing}{method used to handle missing values (see Details)} \item{order}{method used to order the axes (see Details)} \item{showPoints}{logical operator indicating whether points should be plotted or not} \item{splineFactor}{logical or numeric operator indicating whether spline interpolation should be used. Numeric values will multiplied by the number of columns, \code{TRUE} will default to cubic interpolation, \code{\link[base]{AsIs}} to set the knot count directly and \code{0}, \code{FALSE}, or non-numeric values will not use spline interpolation.} \item{alphaLines}{value of alpha scaler for the lines of the parcoord plot or a column name of the data} \item{boxplot}{logical operator indicating whether or not boxplots should underlay the distribution of each variable} \item{shadeBox}{color of underlying box which extends from the min to the max for each variable (no box is plotted if \code{shadeBox == NULL})} \item{mapping}{aes string to pass to ggplot object} \item{title}{character string denoting the title of the plot} } \value{ ggplot object that if called, will print } \description{ A function for plotting static parallel coordinate plots, utilizing the \code{ggplot2} graphics package. } \details{ \code{scale} is a character string that denotes how to scale the variables in the parallel coordinate plot. Options: \describe{ \item{\code{std}}{: univariately, subtract mean and divide by standard deviation} \item{\code{robust}}{: univariately, subtract median and divide by median absolute deviation} \item{\code{uniminmax}}{: univariately, scale so the minimum of the variable is zero, and the maximum is one} \item{\code{globalminmax}}{: no scaling is done; the range of the graphs is defined by the global minimum and the global maximum} \item{\code{center}}{: use \code{uniminmax} to standardize vertical height, then center each variable at a value specified by the \code{scaleSummary} param} \item{\code{centerObs}}{: use \code{uniminmax} to standardize vertical height, then center each variable at the value of the observation specified by the \code{centerObsID} param} } \code{missing} is a character string that denotes how to handle missing missing values. Options: \describe{ \item{\code{exclude}}{: remove all cases with missing values} \item{\code{mean}}{: set missing values to the mean of the variable} \item{\code{median}}{: set missing values to the median of the variable} \item{\code{min10}}{: set missing values to 10\% below the minimum of the variable} \item{\code{random}}{: set missing values to value of randomly chosen observation on that variable} } \code{order} is either a vector of indices or a character string that denotes how to order the axes (variables) of the parallel coordinate plot. Options: \describe{ \item{\code{(default)}}{: order by the vector denoted by \code{columns}} \item{\code{(given vector)}}{: order by the vector specified} \item{\code{anyClass}}{: order variables by their separation between any one class and the rest (as opposed to their overall variation between classes). This is accomplished by calculating the F-statistic for each class vs. the rest, for each axis variable. The axis variables are then ordered (decreasing) by their maximum of k F-statistics, where k is the number of classes.} \item{\code{allClass}}{: order variables by their overall F statistic (decreasing) from an ANOVA with \code{groupColumn} as the explanatory variable (note: it is required to specify a \code{groupColumn} with this ordering method). Basically, this method orders the variables by their variation between classes (most to least).} \item{\code{skewness}}{: order variables by their sample skewness (most skewed to least skewed)} \item{\code{Outlying}}{: order by the scagnostic measure, Outlying, as calculated by the package \code{scagnostics}. Other scagnostic measures available to order by are \code{Skewed}, \code{Clumpy}, \code{Sparse}, \code{Striated}, \code{Convex}, \code{Skinny}, \code{Stringy}, and \code{Monotonic}. Note: To use these methods of ordering, you must have the \code{scagnostics} package loaded.} } } \examples{ # small function to display plots only if it's interactive p_ <- GGally::print_if_interactive # use sample of the diamonds data for illustrative purposes data(diamonds, package = "ggplot2") diamonds.samp <- diamonds[sample(1:dim(diamonds)[1], 100), ] # basic parallel coordinate plot, using default settings p <- ggparcoord(data = diamonds.samp, columns = c(1, 5:10)) p_(p) # this time, color by diamond cut p <- ggparcoord(data = diamonds.samp, columns = c(1, 5:10), groupColumn = 2) p_(p) # underlay univariate boxplots, add title, use uniminmax scaling p <- ggparcoord( data = diamonds.samp, columns = c(1, 5:10), groupColumn = 2, scale = "uniminmax", boxplot = TRUE, title = "Parallel Coord. Plot of Diamonds Data" ) p_(p) # utilize ggplot2 aes to switch to thicker lines p <- ggparcoord( data = diamonds.samp, columns = c(1, 5:10), groupColumn = 2, title = "Parallel Coord. Plot of Diamonds Data", mapping = ggplot2::aes(linewidth = 1) ) + ggplot2::scale_linewidth_identity() p_(p) # basic parallel coord plot of the msleep data, using 'random' imputation and # coloring by diet (can also use variable names in the columns and groupColumn # arguments) data(msleep, package = "ggplot2") p <- ggparcoord( data = msleep, columns = 6:11, groupColumn = "vore", missing = "random", scale = "uniminmax" ) p_(p) # center each variable by its median, using the default missing value handler, # 'exclude' p <- ggparcoord( data = msleep, columns = 6:11, groupColumn = "vore", scale = "center", scaleSummary = "median" ) p_(p) # with the iris data, order the axes by overall class (Species) separation using # the anyClass option p <- ggparcoord(data = iris, columns = 1:4, groupColumn = 5, order = "anyClass") p_(p) # add points to the plot, add a title, and use an alpha scalar to make the lines # transparent p <- ggparcoord( data = iris, columns = 1:4, groupColumn = 5, order = "anyClass", showPoints = TRUE, title = "Parallel Coordinate Plot for the Iris Data", alphaLines = 0.3 ) p_(p) # color according to a column iris2 <- iris iris2$alphaLevel <- c("setosa" = 0.2, "versicolor" = 0.3, "virginica" = 0)[iris2$Species] p <- ggparcoord( data = iris2, columns = 1:4, groupColumn = 5, order = "anyClass", showPoints = TRUE, title = "Parallel Coordinate Plot for the Iris Data", alphaLines = "alphaLevel" ) p_(p) ## Use splines on values, rather than lines (all produce the same result) columns <- c(1, 5:10) p <- ggparcoord(diamonds.samp, columns, groupColumn = 2, splineFactor = TRUE) p_(p) p <- ggparcoord(diamonds.samp, columns, groupColumn = 2, splineFactor = 3) p_(p) } \author{ Jason Crowley, Barret Schloerke, Dianne Cook, Heike Hofmann, Hadley Wickham } GGally/man/plotting_data_type.Rd0000644000176200001440000000045013663637143016400 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/find-combo.R \name{plotting_data_type} \alias{plotting_data_type} \title{Get plotting data type} \usage{ plotting_data_type(x) } \arguments{ \item{x}{vector} } \description{ Get plotting data type } \keyword{internal} GGally/man/ggally_nostic_line.Rd0000644000176200001440000000263113764714663016363 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggnostic.R \name{ggally_nostic_line} \alias{ggally_nostic_line} \title{\code{\link{ggnostic}} background line with geom} \usage{ ggally_nostic_line( data, mapping, ..., linePosition = NULL, lineColor = "red", lineSize = 0.5, lineAlpha = 1, lineType = 1, continuous_geom = ggplot2::geom_point, combo_geom = ggplot2::geom_boxplot, mapColorToFill = TRUE ) } \arguments{ \item{data, mapping}{supplied directly to \code{\link[ggplot2:ggplot]{ggplot2::ggplot()}}} \item{...}{parameters supplied to \code{continuous_geom} or \code{combo_geom}} \item{linePosition, lineColor, lineSize, lineAlpha, lineType}{parameters supplied to \code{\link[ggplot2:geom_path]{ggplot2::geom_line()}}} \item{continuous_geom}{\pkg{ggplot2} geom that is executed after the line is (possibly) added and if the x data is continuous} \item{combo_geom}{\pkg{ggplot2} geom that is executed after the line is (possibly) added and if the x data is discrete} \item{mapColorToFill}{boolean to determine if combo plots should cut the color mapping to the fill mapping} } \value{ \pkg{ggplot2} plot object } \description{ If a non-null \code{linePosition} value is given, a line will be drawn before the given \code{continuous_geom} or \code{combo_geom} is added to the plot. } \details{ Functions with a color in their name have different default color behavior. } GGally/man/ggmatrix_progress.Rd0000644000176200001440000000170114321332407016237 0ustar liggesusers% Generated by roxygen2: do not edit by hand % Please edit documentation in R/ggmatrix_progress.R \name{ggmatrix_progress} \alias{ggmatrix_progress} \title{\code{\link{ggmatrix}} default progress bar} \usage{ ggmatrix_progress( format = " plot: [:plot_i, :plot_j] [:bar]:percent est::eta ", clear = TRUE, show_after = 0, ... ) } \arguments{ \item{format, clear, show_after, ...}{parameters supplied directly to \code{progress::\link[progress]{progress_bar}$new()}} } \value{ function that accepts a plot matrix as the first argument and \code{...} for future expansion. Internally, the plot matrix is used to determine the total number of plots for the progress bar. } \description{ \code{\link{ggmatrix}} default progress bar } \examples{ p_ <- GGally::print_if_interactive pm <- ggpairs(iris, 1:2, progress = ggmatrix_progress()) p_(pm) # does not clear after finishing pm <- ggpairs(iris, 1:2, progress = ggmatrix_progress(clear = FALSE)) p_(pm) } GGally/DESCRIPTION0000644000176200001440000001013515052263362013143 0ustar liggesusersType: Package Package: GGally Title: Extension to 'ggplot2' Version: 2.4.0 Authors@R: c( person("Barret", "Schloerke", , "schloerke@gmail.com", role = c("aut", "cre"), comment = c(ORCID = "0000-0001-9986-114X")), person("Di", "Cook", , "dicook@monash.edu", role = c("aut", "ths"), comment = c(ORCID = "0000-0002-3813-7155")), person("Joseph", "Larmarange", , "joseph@larmarange.net", role = "aut", comment = c(ORCID = "0000-0001-7097-700X")), person("Francois", "Briatte", , "f.briatte@gmail.com", role = "aut"), person("Moritz", "Marbach", , "mmarbach@mail.uni-mannheim.de", role = "aut"), person("Edwin", "Thoen", , "edwinthoen@gmail.com", role = "aut"), person("Amos", "Elberg", , "amos.elberg@gmail.com", role = "aut"), person("Ott", "Toomet", , "otoomet@gmail.com", role = "ctb"), person("Jason", "Crowley", , "crowley.jason.s@gmail.com", role = "aut"), person("Heike", "Hofmann", , "hhofmann4@unl.edu", role = "ths", comment = c(ORCID = "0000-0001-6216-5183")), person("Hadley", "Wickham", , "h.wickham@gmail.com", role = "ths", comment = c(ORCID = "0000-0003-4757-117X")) ) Description: The R package 'ggplot2' is a plotting system based on the grammar of graphics. 'GGally' extends 'ggplot2' by adding several functions to reduce the complexity of combining geometric objects with transformed data. Some of these functions include a pairwise plot matrix, a two group pairwise plot matrix, a parallel coordinates plot, a survival plot, and several functions to plot networks. License: GPL (>= 2.0) URL: https://ggobi.github.io/ggally/, https://github.com/ggobi/ggally BugReports: https://github.com/ggobi/ggally/issues Depends: ggplot2 (>= 3.5.2), R (>= 4.3) Imports: cli, dplyr (>= 1.1.0), ggstats (>= 0.9.0), grDevices, grid, gtable (>= 0.2.0), lifecycle, magrittr, progress, RColorBrewer, rlang, S7 (>= 0.2.0), scales (>= 1.3.0), tidyr (>= 1.3.0), utils Suggests: airports, broom (>= 0.7.0), broom.helpers (>= 1.3.0), chemometrics, crosstalk, emmeans, geosphere (>= 1.5-1), ggforce, Hmisc, igraph (>= 1.0.1), intergraph (>= 2.0-2), knitr, labelled, mapproj, maps (>= 3.1.0), network (>= 1.17.1), nnet, rmarkdown, scagnostics, sna (>= 2.3-2), spelling, survival, testthat (>= 3.0.0), vdiffr RdMacros: lifecycle Config/Needs/website: tidyverse/tidytemplate Config/testthat/edition: 3 Config/usethis/last-upkeep: 2025-06-13 Encoding: UTF-8 Language: en-US LazyData: true LazyLoad: yes RoxygenNote: 7.3.2 SystemRequirements: openssl Collate: 'GGally-package.R' 'data-australia-pisa-2012.R' 'data-baseball.R' 'data-flea.R' 'data-happy.R' 'data-nasa.R' 'data-nba_ppg_2008.R' 'data-pigs.R' 'data-psychademic.R' 'data-tips.R' 'data-twitter_spambots.R' 'deprecated.R' 'find-combo.R' 'gg-plots.R' 'ggally_colbar.R' 'ggally_cross.R' 'ggaly_trends.R' 'ggbivariate.R' 'ggcoef.R' 'ggcorr.R' 'ggfacet.R' 'gglyph.R' 'ggpairs_getput.R' 'ggmatrix.R' 'ggmatrix_gtable.R' 'ggmatrix_gtable_helpers.R' 'ggmatrix_legend.R' 'ggmatrix_make_plot.R' 'ggmatrix_print.R' 'ggmatrix_progress.R' 'ggnet.R' 'ggnet2.R' 'ggnetworkmap.R' 'ggnostic.R' 'ggpairs.R' 'ggpairs_add.R' 'ggpairs_internal_plots.R' 'ggparcoord.R' 'ggsave.R' 'ggscatmat.R' 'ggsurv.R' 'ggtable.R' 'reexports.R' 'utils-pipe.R' 'utils.R' 'vig_ggally.R' 'zzz.R' NeedsCompilation: no Packaged: 2025-08-18 17:35:30 UTC; barret Author: Barret Schloerke [aut, cre] (ORCID: ), Di Cook [aut, ths] (ORCID: ), Joseph Larmarange [aut] (ORCID: ), Francois Briatte [aut], Moritz Marbach [aut], Edwin Thoen [aut], Amos Elberg [aut], Ott Toomet [ctb], Jason Crowley [aut], Heike Hofmann [ths] (ORCID: ), Hadley Wickham [ths] (ORCID: ) Maintainer: Barret Schloerke Repository: CRAN Date/Publication: 2025-08-23 07:00:02 UTC